36 datasets found
  1. Dataset #1: Cross-sectional survey data

    • figshare.com
    txt
    Updated Jul 19, 2023
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    Adam Baimel (2023). Dataset #1: Cross-sectional survey data [Dataset]. http://doi.org/10.6084/m9.figshare.23708730.v1
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    txtAvailable download formats
    Dataset updated
    Jul 19, 2023
    Dataset provided by
    Figsharehttp://figshare.com/
    Authors
    Adam Baimel
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    N.B. This is not real data. Only here for an example for project templates.

    Project Title: Add title here

    Project Team: Add contact information for research project team members

    Summary: Provide a descriptive summary of the nature of your research project and its aims/focal research questions.

    Relevant publications/outputs: When available, add links to the related publications/outputs from this data.

    Data availability statement: If your data is not linked on figshare directly, provide links to where it is being hosted here (i.e., Open Science Framework, Github, etc.). If your data is not going to be made publicly available, please provide details here as to the conditions under which interested individuals could gain access to the data and how to go about doing so.

    Data collection details: 1. When was your data collected? 2. How were your participants sampled/recruited?

    Sample information: How many and who are your participants? Demographic summaries are helpful additions to this section.

    Research Project Materials: What materials are necessary to fully reproduce your the contents of your dataset? Include a list of all relevant materials (e.g., surveys, interview questions) with a brief description of what is included in each file that should be uploaded alongside your datasets.

    List of relevant datafile(s): If your project produces data that cannot be contained in a single file, list the names of each of the files here with a brief description of what parts of your research project each file is related to.

    Data codebook: What is in each column of your dataset? Provide variable names as they are encoded in your data files, verbatim question associated with each response, response options, details of any post-collection coding that has been done on the raw-response (and whether that's encoded in a separate column).

    Examples available at: https://www.thearda.com/data-archive?fid=PEWMU17 https://www.thearda.com/data-archive?fid=RELLAND14

  2. BLM OR Water Quality and Quantity Cross Section Sample Publication Point Hub...

    • catalog.data.gov
    • datasets.ai
    • +1more
    Updated Nov 11, 2025
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    Bureau of Land Management (2025). BLM OR Water Quality and Quantity Cross Section Sample Publication Point Hub [Dataset]. https://catalog.data.gov/dataset/blm-or-water-quality-and-quantity-cross-section-sample-publication-point-hub-d1d6d
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    Dataset updated
    Nov 11, 2025
    Dataset provided by
    Bureau of Land Managementhttp://www.blm.gov/
    Description

    CROSS_SECT_SAMPLE_PUB_PT: Cross-sectional surveys capture the shape of the stream channel at a specific location by measuring elevations at intervals across the channel. Cross-sections are used to determine bankfull width, mean bankfull depth, and entrenchment of a channel at a specific point. Cross-sections are usually installed and monitored to track geomorphic change in a stream before and after a physical alteration to the channel; these surveys can detect erosion and deposition of stream sediment as well as changes to the shape (profile) of stream bed and banks. The cross-section table defined in this data standard stores the summary measurements. Raw data can be stored in a spreadsheet or document and related to the record.

  3. Z

    Real and simulated cross-sectional and longitudinal images of hair

    • nde-dev.biothings.io
    • data.niaid.nih.gov
    Updated Nov 26, 2020
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    Lasisi, Tina (2020). Real and simulated cross-sectional and longitudinal images of hair [Dataset]. https://nde-dev.biothings.io/resources?id=zenodo_4289251
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    Dataset updated
    Nov 26, 2020
    Dataset authored and provided by
    Lasisi, Tina
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    This is the dataset containing simulated and real data used in the analyses for the paper "High-throughput phenotyping methods for quantifying hair fiber morphology" and is part of the Hair Phenotyping Methods Project run by Tina Lasisi.

    The data can be analyzed with the fibermorph Python package available on PyPi and Github.

    This repository has 2 datasets with 2 different types of data:

    Simulated hair data

    Cross-sectional data (simulated ellipses)

    Curvature data (simulated arcs)

    Real hair data

    Cross-sectional data (micrographs of hair fiber cross-sections)

    Curvature data (longitudinal images of hair fiber fragments)

    Visit the Hair Phenotyping Methods Project website for the most up to date information about this project and any updates relevant to this dataset.

    Details

    Simulated data

    Cross-sectional data

    These ellipses were simulated with a python script developed as part of fibemorph. A version of that code that doesn't require the original Python package has been made available with the dataset (sim_ellipse.py).

    The script simulates a single cross-section per image.

    Each image has a width of 5200px and a height of 3900 with a resolution set to 4.25 px/micron.

    Curvature data

    An R script used for curvature simulation, written by Arslan Zaidi, has also been made available with this dataset (sim_curvature.R).

    The script generates 25 arcs per image. We used a set length of 1.57.

    Each image has a resolution of 132 px/mm.

    Please note that due to the use of random generations, it is not possible to recreate the exact same datasets that are saved here.

    Real data

    The real data images are very large files and have been split into multiple zip files. Please check the specific instructions for unzipping split zip files for your OS.

    The images are from hair samples collected by the Shriver Lab at Penn State. There were a total of 192 samples, although not all images made it past quality control so certain IDs may have cross-section images but not curvature images or vice versa.

    The images have been de-identified and the hair samples for these individuals were collected with informed consent and ethical approval by The Pennsylvania State University Institutional Review Board (#44929 and #45727).

    Cross-sectional data

    We developed and used this protocol to embed, section, and image the hairs.

    We embedded 6 samples per person and took images of both sides of the sectioned sample (A and B). These should be mirror images of each other.

    Curvature data

    We developed and used this protocol to cut, wash, and image the hairs.

    We used 3-5 hairs per person where available. A number of samples did not have enough hair for this, so the images contain fewer fragments. We have made these available for full transparency although we filtered them from our analyses downstream.

    Please see the GitHub repository for additional related participant data we used in our analyses.

  4. f

    S1 File -

    • plos.figshare.com
    bin
    Updated Feb 23, 2024
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    Tamrat Anbesaw; Amare Asmamaw; Kidist Adamu; Million Tsegaw (2024). S1 File - [Dataset]. http://doi.org/10.1371/journal.pone.0298406.s001
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    binAvailable download formats
    Dataset updated
    Feb 23, 2024
    Dataset provided by
    PLOS ONE
    Authors
    Tamrat Anbesaw; Amare Asmamaw; Kidist Adamu; Million Tsegaw
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    BackgroundCurrently, the biggest issue facing the entire world is mental health. According to the Ethiopian Ministry of Health, nearly one-fourth of the community is experiencing any of the mental illness categories. Most of the cases were treated in religious and traditional institutions, which the community most liked to be treated. However, there were very limited studies conducted to show the level of mental health literacy among traditional healers.AimsThe study aimed to assess the level of mental health literacy and its associated factors among traditional healers toward mental illness found in Northeast, Ethiopia from September 1-30/2022.MethodA mixed approach cross-sectional study design was carried out on September 130, 2022, using simple random sampling with a total sample of 343. Pretested, structured questionnaires and face-to-face interviews were utilized for data collection. The level of Mental Health Literacy (MHL) was assessed using the 35 mental health literacy (35-MHLQ) scale. The semi-structured checklist was used for the in-depth interview and the FGD for the qualitative part. Data was entered using Epi-data version 4.6 and, then exported to SPSS version 26 for analysis. The association between outcome and independent variables was analyzed with bivariate and multivariable linear regression. P-values < 0.05 were considered statistically significant. Thematic analysis was used to analyze the qualitative data, and the findings were then referenced with the findings of the quantitative data.ResultsThe findings of this study showed that the sample of traditional healers found in Dessie City scored a total mean of mental health literacy of 91.81 ± 10:53. Age (β = -0.215, 95% CI (-0.233, -0.05), p = 0.003, informal educational status (β = -5.378, 95% CI (-6.505, -0.350), p = 0.029, presence of relative with a mental disorder (β = 6.030, 95% CI (0.073, 7.428),p = 0.046, getting information on mental illness (β = 6.565, 95% CI (3.432, 8.680), p =

  5. General Social Survey 2008 Cross-Section and Panel Combined

    • thearda.com
    Updated 2008
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    The Association of Religion Data Archives (2008). General Social Survey 2008 Cross-Section and Panel Combined [Dataset]. http://doi.org/10.17605/OSF.IO/KJQ78
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    Dataset updated
    2008
    Dataset provided by
    Association of Religion Data Archives
    Dataset funded by
    National Science Foundation
    Description

    The General Social Surveys (GSS) have been conducted by the "https://www.norc.org/Pages/default.aspx" Target="_blank">National Opinion Research Center (NORC) annually since 1972, except for the years 1979, 1981, and 1992 (a supplement was added in 1992), and biennially beginning in 1994. The GSS are designed to be part of a program of social indicator research, replicating questionnaire items and wording in order to facilitate time-trend studies. The 2008 GSS featured special modules on attitudes toward science and technology, self-employment, terrorism preparation, global economics, sports and leisure, social inequality, sexual behaviors and religion. Items on religion covered denominational affiliation, church attendance, religious upbringing, personal beliefs, and religious experiences.

    The GSS is in transition from a replicating cross-sectional design to a design that uses rotating panels. In 2008 there were two components: a new 2008 cross-section with 2,023 cases and the first re-interviews (panel) with 1,536 respondents from the 2006 GSS. The 2,023 cases in the cross-section have been previously released as a part of the 1972-2008 cumulative data. This new release includes those 1,536 re-interviewed panel cases along with the 2,023 cases. Please note that this is not a cumulative file - those cases and variables not surveyed in 2008 are excluded. Also note that, although those 1,536 cases were from the 2006 sample, this release does not include their responses in 2006. We plan to release a data file with the previous responses in the future. This release introduces new variables that were asked only of the panel cases of the 2008 GSS. The majority of variables introduced are related to the 2007 International Social Survey Program (ISSP) module on leisure time and sports.

    To download syntax files for the GSS that reproduce well-known religious group recodes, including RELTRAD, please visit the "/research/syntax-repository-list" Target="_blank">ARDA's Syntax Repository.

  6. European Union Statistics on Income and Living Conditions 2013 -...

    • catalog.ihsn.org
    • datacatalog.ihsn.org
    Updated Mar 29, 2019
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    Eurostat (2019). European Union Statistics on Income and Living Conditions 2013 - Cross-Sectional User Database - Netherlands [Dataset]. https://catalog.ihsn.org/index.php/catalog/7684
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    Dataset updated
    Mar 29, 2019
    Dataset authored and provided by
    Eurostathttps://ec.europa.eu/eurostat
    Time period covered
    2013
    Area covered
    Netherlands
    Description

    Abstract

    In 2013, the EU-SILC instrument covered all EU Member States plus Iceland, Turkey, Norway, Switzerland and Croatia. EU-SILC has become the EU reference source for comparative statistics on income distribution and social exclusion at European level, particularly in the context of the "Program of Community action to encourage cooperation between Member States to combat social exclusion" and for producing structural indicators on social cohesion for the annual spring report to the European Council. The first priority is to be given to the delivery of comparable, timely and high quality cross-sectional data.

    There are two types of datasets: 1) Cross-sectional data pertaining to fixed time periods, with variables on income, poverty, social exclusion and living conditions. 2) Longitudinal data pertaining to individual-level changes over time, observed periodically - usually over four years.

    Social exclusion and housing-condition information is collected at household level. Income at a detailed component level is collected at personal level, with some components included in the "Household" section. Labor, education and health observations only apply to persons aged 16 and over. EU-SILC was established to provide data on structural indicators of social cohesion (at-risk-of-poverty rate, S80/S20 and gender pay gap) and to provide relevant data for the two 'open methods of coordination' in the field of social inclusion and pensions in Europe.

    This is the 1st version of the 2013 Cross-Sectional User Database as released in July 2015.

    Geographic coverage

    The survey covers following countries: Austria; Belgium; Bulgaria; Croatia; Cyprus; Czech Republic; Denmark; Estonia; Finland; France; Germany; Greece; Spain; Ireland; Italy; Latvia; Lithuania; Luxembourg; Hungary; Malta; Netherlands; Poland; Portugal; Romania; Slovenia; Slovakia; Serbia; Sweden; United Kingdom; Iceland; Norway; Turkey; Switzerland

    Small parts of the national territory amounting to no more than 2% of the national population and the national territories listed below may be excluded from EU-SILC: France - French Overseas Departments and territories; Netherlands - The West Frisian Islands with the exception of Texel; Ireland - All offshore islands with the exception of Achill, Bull, Cruit, Gorumna, Inishnee, Lettermore, Lettermullan and Valentia; United Kingdom - Scotland north of the Caledonian Canal, the Scilly Islands.

    Analysis unit

    • Households;
    • Individuals 16 years and older.

    Universe

    The survey covered all household members over 16 years old. Persons living in collective households and in institutions are generally excluded from the target population.

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    On the basis of various statistical and practical considerations and the precision requirements for the most critical variables, the minimum effective sample sizes to be achieved were defined. Sample size for the longitudinal component refers, for any pair of consecutive years, to the number of households successfully interviewed in the first year in which all or at least a majority of the household members aged 16 or over are successfully interviewed in both the years.

    For the cross-sectional component, the plans are to achieve the minimum effective sample size of around 131.000 households in the EU as a whole (137.000 including Iceland and Norway). The allocation of the EU sample among countries represents a compromise between two objectives: the production of results at the level of individual countries, and production for the EU as a whole. Requirements for the longitudinal data will be less important. For this component, an effective sample size of around 98.000 households (103.000 including Iceland and Norway) is planned.

    Member States using registers for income and other data may use a sample of persons (selected respondents) rather than a sample of complete households in the interview survey. The minimum effective sample size in terms of the number of persons aged 16 or over to be interviewed in detail is in this case taken as 75 % of the figures shown in columns 3 and 4 of the table I, for the cross-sectional and longitudinal components respectively.

    The reference is to the effective sample size, which is the size required if the survey were based on simple random sampling (design effect in relation to the 'risk of poverty rate' variable = 1.0). The actual sample sizes will have to be larger to the extent that the design effects exceed 1.0 and to compensate for all kinds of non-response. Furthermore, the sample size refers to the number of valid households which are households for which, and for all members of which, all or nearly all the required information has been obtained. For countries with a sample of persons design, information on income and other data shall be collected for the household of each selected respondent and for all its members.

    At the beginning, a cross-sectional representative sample of households is selected. It is divided into say 4 sub-samples, each by itself representative of the whole population and similar in structure to the whole sample. One sub-sample is purely cross-sectional and is not followed up after the first round. Respondents in the second sub-sample are requested to participate in the panel for 2 years, in the third sub-sample for 3 years, and in the fourth for 4 years. From year 2 onwards, one new panel is introduced each year, with request for participation for 4 years. In any one year, the sample consists of 4 sub-samples, which together constitute the cross-sectional sample. In year 1 they are all new samples; in all subsequent years, only one is new sample. In year 2, three are panels in the second year; in year 3, one is a panel in the second year and two in the third year; in subsequent years, one is a panel for the second year, one for the third year, and one for the fourth (final) year.

    According to the Commission Regulation on sampling and tracing rules, the selection of the sample will be drawn according to the following requirements:

    1. For all components of EU-SILC (whether survey or register based), the crosssectional and longitudinal (initial sample) data shall be based on a nationally representative probability sample of the population residing in private households within the country, irrespective of language, nationality or legal residence status. All private households and all persons aged 16 and over within the household are eligible for the operation.
    2. Representative probability samples shall be achieved both for households, which form the basic units of sampling, data collection and data analysis, and for individual persons in the target population.
    3. The sampling frame and methods of sample selection shall ensure that every individual and household in the target population is assigned a known and non-zero probability of selection.
    4. By way of exception, paragraphs 1 to 3 shall apply in Germany exclusively to the part of the sample based on probability sampling according to Article 8 of the Regulation of the European Parliament and of the Council (EC) No 1177/2003 concerning

    Community Statistics on Income and Living Conditions. Article 8 of the EU-SILC Regulation of the European Parliament and of the Council mentions: 1. The cross-sectional and longitudinal data shall be based on nationally representative probability samples. 2. By way of exception to paragraph 1, Germany shall supply cross-sectional data based on a nationally representative probability sample for the first time for the year 2008. For the year 2005, Germany shall supply data for one fourth based on probability sampling and for three fourths based on quota samples, the latter to be progressively replaced by random selection so as to achieve fully representative probability sampling by 2008. For the longitudinal component, Germany shall supply for the year 2006 one third of longitudinal data (data for year 2005 and 2006) based on probability sampling and two thirds based on quota samples. For the year 2007, half of the longitudinal data relating to years 2005, 2006 and 2007 shall be based on probability sampling and half on quota sample. After 2007 all of the longitudinal data shall be based on probability sampling.

    Detailed information about sampling is available in Quality Reports in Related Materials.

    Mode of data collection

    Mixed

  7. General Social Survey 2012 Cross-Section and Panel Combined - Instructional...

    • thearda.com
    Updated 2012
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    Tom W. Smith (2012). General Social Survey 2012 Cross-Section and Panel Combined - Instructional Dataset [Dataset]. http://doi.org/10.17605/OSF.IO/TH2CE
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    Dataset updated
    2012
    Dataset provided by
    Association of Religion Data Archives
    Authors
    Tom W. Smith
    Dataset funded by
    National Science Foundation
    Description

    This file contains all of the cases and variables that are in the original 2012 General Social Survey, but is prepared for easier use in the classroom. Changes have been made in two areas. First, to avoid confusion when constructing tables or interpreting basic analysis, all missing data codes have been set to system missing. Second, many of the continuous variables have been categorized into fewer categories, and added as additional variables to the file.

    The General Social Surveys (GSS) have been conducted by the National Opinion Research Center (NORC) annually since 1972, except for the years 1979, 1981, and 1992 (a supplement was added in 1992), and biennially beginning in 1994. The GSS are designed to be part of a program of social indicator research, replicating questionnaire items and wording in order to facilitate time-trend studies. This data file has all cases and variables asked on the 2012 GSS. There are a total of 4,820 cases in the data set but their initial sampling years vary because the GSS now contains panel cases. Sampling years can be identified with the variable SAMPTYPE.

    The 2012 GSS featured special modules on religious scriptures, the environment, dance and theater performances, health care system, government involvement, health concerns, emotional health, financial independence and income inequality.

    The GSS has switched from a repeating, cross-section design to a combined repeating cross-section and panel-component design. This file has a rolling panel design, with the 2008 GSS as the base year for the first panel. A sub-sample of 2,000 GSS cases from 2008 was selected for reinterview in 2010 and again in 2012 as part of the GSSs in those years. The 2010 GSS consisted of a new cross-section plus the reinterviews from 2008. The 2012 GSS consists of a new cross-section of 1,974, the first reinterview wave of the 2010 panel cases with 1,551 completed cases, and the second and final reinterview of the 2008 panel with 1,295 completed cases. Altogether, the 2012 GSS had 4,820 cases (1,974 in the new 2012 panel, 1,551 in the 2010 panel, and 1,295 in the 2008 panel).

    To download syntax files for the GSS that reproduce well-known religious group recodes, including RELTRAD, please visit the "/research/syntax-repository-list" Target="_blank">ARDA's Syntax Repository.

  8. H

    Pricing example and sample data for "Cross-Sectional Variation of...

    • dataverse.harvard.edu
    Updated Nov 10, 2025
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    LIUREN WU (2025). Pricing example and sample data for "Cross-Sectional Variation of Risk-targeting Option Portfolios" [Dataset]. http://doi.org/10.7910/DVN/G2YIUR
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    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Nov 10, 2025
    Dataset provided by
    Harvard Dataverse
    Authors
    LIUREN WU
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    The excel file contains one day's data on one stock and shows how to construct risk-targeting option portfolios and estimate the market price of risk for each risk dimension. The Internet Appendix describes the operations in the excel file.

  9. d

    Data from: The validity of self-reported weight in US adults: a population...

    • catalog.data.gov
    • data.virginia.gov
    • +1more
    Updated Sep 6, 2025
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    National Institutes of Health (2025). The validity of self-reported weight in US adults: a population based cross-sectional study [Dataset]. https://catalog.data.gov/dataset/the-validity-of-self-reported-weight-in-us-adults-a-population-based-cross-sectional-study
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    Dataset updated
    Sep 6, 2025
    Dataset provided by
    National Institutes of Health
    Area covered
    United States
    Description

    Background Investigating the validity of the self-reported values of weight allows for the proper assessment of studies using questionnaire-derived data. The study examined the accuracy of gender-specific self-reported weight in a sample of adults. The effects of age, education, race and ethnicity, income, general health and medical status on the degree of discrepancy (the difference between self-reported weight and measured weight) are similarly considered. Methods The analysis used data from the US Third National Health and Nutrition Examination Survey. Self-reported and measured weights were abstracted and analyzed according to sex, age, measured weight, self-reported weight, and body mass index (BMI). A proportional odds model was applied. Results The weight discrepancy was positively associated with age, and negatively associated with measured weight and BMI. Ordered logistic regression modeling showed age, race-ethnicity, education, and BMI to be associated with the degree of discrepancy in both sexes. In men, additional predictors were consumption of more than 100 cigarettes and the desire to change weight. In women, marital status, income, activity level, and the number of months since the last doctor's visit were important. Conclusions Predictors of the degree of weight discrepancy are gender-specific, and require careful consideration when examined.

  10. f

    S1 Data -

    • plos.figshare.com
    xlsx
    Updated Jul 16, 2024
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    Endalkachew Worku Mengesha; Tadesse Dagget Tesfaye; Minyahil Tadesse Boltena; Zewdie Birhanu; Morankar Sudhakar; Kalkidan Hassen; Kiya Kedir; Firaol Mesfin; Elifaged Hailemeskel; Melat Dereje; Eskedar A. Hailegebrel; Rawleigh Howe; Finina Abebe; Yordanos Tadesse; Eshetu Girma; Fisseha Wadilo; Eyasu Alem Lake; Mistire Teshome Guta; Bereket Damtew; Adisalem Debebe; Zerihun Tariku; Demuma Amdisa; Desta Hiko; Addisu Worku; Mussie G/michael; Yoseph Gebreyohannes Abraha; Sabit Ababor Ababulgu; Netsanet Fentahun (2024). S1 Data - [Dataset]. http://doi.org/10.1371/journal.pgph.0003459.s005
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    xlsxAvailable download formats
    Dataset updated
    Jul 16, 2024
    Dataset provided by
    PLOS Global Public Health
    Authors
    Endalkachew Worku Mengesha; Tadesse Dagget Tesfaye; Minyahil Tadesse Boltena; Zewdie Birhanu; Morankar Sudhakar; Kalkidan Hassen; Kiya Kedir; Firaol Mesfin; Elifaged Hailemeskel; Melat Dereje; Eskedar A. Hailegebrel; Rawleigh Howe; Finina Abebe; Yordanos Tadesse; Eshetu Girma; Fisseha Wadilo; Eyasu Alem Lake; Mistire Teshome Guta; Bereket Damtew; Adisalem Debebe; Zerihun Tariku; Demuma Amdisa; Desta Hiko; Addisu Worku; Mussie G/michael; Yoseph Gebreyohannes Abraha; Sabit Ababor Ababulgu; Netsanet Fentahun
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Hypertension poses a significant public health challenge in sub-Saharan Africa due to various risk factors. Community-based intervention for prevention and control of hypertension is an effective strategy to minimize the negative health outcomes. However, comprehensive systematic review evidence to inform effective community-based interventions for prevention and control of hypertension in low resource settings is lacking. This study aimed to synthesize the effectiveness of community-based interventions on prevention and control of hypertension in sub-Saharan Africa. A comprehensive search for studies was carried out on PubMed, CINAHL, Web of Science Core Collection, Embase, Scopus, and Google scholar databases. The result of the review was reported according to PRISMA guidelines. Studies published in English language were included. Two independent reviewers conducted critical appraisal of included studies and extracted the data using predefined excel sheet. Experimental, quasi experimental, cohort and analytical cross-sectional studies conducted on adults who have received community-based interventions for prevention and controls of hypertension in sub-Saharan Africa were included. In this systematic review, a total of eight studies were included, comprising of two interventional studies, two quasi-experimental studies, three cohort studies, and one comparative cross-sectional study. The interventions included health education, health promotion, home-based screening and diagnosis, as well as referral and treatment of hypertensive patients. The sample sizes ranged from 236 to 13,412 in the intervention group and 346 to 6,398 in the control group. This systematic review shows the effect of community-based interventions on reduction of systolic and diastolic blood pressure. However, the existing evidence is inconsistence and not strong enough to synthesize the effect of community-based interventions for the prevention and control of hypertension in sub-Saharan Africa. Hence, further primary studies need on the effect of community-based interventions for the prevention and control of hypertension in sub-Saharan Africa.Systematic review registration number: PROSPERO CRD42022342823.

  11. c

    Labour Force Survey Five-Quarter Longitudinal Dataset, April 2022 - June...

    • datacatalogue.cessda.eu
    Updated Nov 29, 2024
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    Office for National Statistics (2024). Labour Force Survey Five-Quarter Longitudinal Dataset, April 2022 - June 2023 [Dataset]. http://doi.org/10.5255/UKDA-SN-9133-1
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    Dataset updated
    Nov 29, 2024
    Authors
    Office for National Statistics
    Time period covered
    Apr 1, 2022 - Jun 30, 2023
    Area covered
    United Kingdom
    Variables measured
    Individuals
    Measurement technique
    Compilation or synthesis of existing material, the datasets were created from existing QLFS data. They do not contain all records, but only those of respondents of working age who have responded to the survey in all the periods being linked. The data therefore comprise approximately one third of all QLFS variables. Cases were linked using the QLFS panel design.
    Description

    Abstract copyright UK Data Service and data collection copyright owner.

    Background
    The Labour Force Survey (LFS) is a unique source of information using international definitions of employment and unemployment and economic inactivity, together with a wide range of related topics such as occupation, training, hours of work and personal characteristics of household members aged 16 years and over. It is used to inform social, economic and employment policy. The LFS was first conducted biennially from 1973-1983. Between 1984 and 1991 the survey was carried out annually and consisted of a quarterly survey conducted throughout the year and a 'boost' survey in the spring quarter (data were then collected seasonally). From 1992 quarterly data were made available, with a quarterly sample size approximately equivalent to that of the previous annual data. The survey then became known as the Quarterly Labour Force Survey (QLFS). From December 1994, data gathering for Northern Ireland moved to a full quarterly cycle to match the rest of the country, so the QLFS then covered the whole of the UK (though some additional annual Northern Ireland LFS datasets are also held at the UK Data Archive). Further information on the background to the QLFS may be found in the documentation.

    Longitudinal data
    The LFS retains each sample household for five consecutive quarters, with a fifth of the sample replaced each quarter. The main survey was designed to produce cross-sectional data, but the data on each individual have now been linked together to provide longitudinal information. The longitudinal data comprise two types of linked datasets, created using the weighting method to adjust for non-response bias. The two-quarter datasets link data from two consecutive waves, while the five-quarter datasets link across a whole year (for example January 2010 to March 2011 inclusive) and contain data from all five waves. A full series of longitudinal data has been produced, going back to winter 1992. Linking together records to create a longitudinal dimension can, for example, provide information on gross flows over time between different labour force categories (employed, unemployed and economically inactive). This will provide detail about people who have moved between the categories. Also, longitudinal information is useful in monitoring the effects of government policies and can be used to follow the subsequent activities and circumstances of people affected by specific policy initiatives, and to compare them with other groups in the population. There are however methodological problems which could distort the data resulting from this longitudinal linking. The ONS continues to research these issues and advises that the presentation of results should be carefully considered, and warnings should be included with outputs where necessary.

    LFS Documentation
    The documentation available from the Archive to accompany LFS datasets largely consists of the latest version of each user guide volume alongside the appropriate questionnaire for the year concerned. However, volumes are updated periodically by ONS, so users are advised to check the latest documents on the ONS Labour Force Survey - User Guidance pages before commencing analysis. This is especially important for users of older QLFS studies, where information and guidance in the user guide documents may have changed over time.

    Occupation data for 2021 and 2022 data files

    The ONS has identified an issue with the collection of some occupational data in 2021 and 2022 data files in a number of their surveys. While they estimate any impacts will be small overall, this will affect the accuracy of the breakdowns of some detailed (four-digit Standard Occupational Classification (SOC)) occupations, and data derived from them. Further information can be found in the ONS article published on 11 July 2023: Revision of miscoded occupational data in the ONS Labour Force Survey, UK: January 2021 to September 2022.

    2022 Weighting

    The population totals used for the latest LFS estimates use projected growth rates from Real Time Information (RTI) data for UK, EU and non-EU populations based on 2021 patterns. The total population used for the LFS therefore does not take into account any changes in migration, birth rates, death rates, and so on since June 2021, and hence levels estimates may be under- or over-estimating the true values and should be used with caution....

  12. 2

    Data from: LFS

    • datacatalogue.ukdataservice.ac.uk
    Updated Sep 21, 2023
    + more versions
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    Office for National Statistics (2023). LFS [Dataset]. http://doi.org/10.5255/UKDA-SN-8878-3
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    Dataset updated
    Sep 21, 2023
    Dataset provided by
    UK Data Servicehttps://ukdataservice.ac.uk/
    Authors
    Office for National Statistics
    Area covered
    United Kingdom
    Description

    Background
    The Labour Force Survey (LFS) is a unique source of information using international definitions of employment and unemployment and economic inactivity, together with a wide range of related topics such as occupation, training, hours of work and personal characteristics of household members aged 16 years and over. It is used to inform social, economic and employment policy. The LFS was first conducted biennially from 1973-1983. Between 1984 and 1991 the survey was carried out annually and consisted of a quarterly survey conducted throughout the year and a 'boost' survey in the spring quarter (data were then collected seasonally). From 1992 quarterly data were made available, with a quarterly sample size approximately equivalent to that of the previous annual data. The survey then became known as the Quarterly Labour Force Survey (QLFS). From December 1994, data gathering for Northern Ireland moved to a full quarterly cycle to match the rest of the country, so the QLFS then covered the whole of the UK (though some additional annual Northern Ireland LFS datasets are also held at the UK Data Archive). Further information on the background to the QLFS may be found in the documentation.

    Longitudinal data
    The LFS retains each sample household for five consecutive quarters, with a fifth of the sample replaced each quarter. The main survey was designed to produce cross-sectional data, but the data on each individual have now been linked together to provide longitudinal information. The longitudinal data comprise two types of linked datasets, created using the weighting method to adjust for non-response bias. The two-quarter datasets link data from two consecutive waves, while the five-quarter datasets link across a whole year (for example January 2010 to March 2011 inclusive) and contain data from all five waves. A full series of longitudinal data has been produced, going back to winter 1992. Linking together records to create a longitudinal dimension can, for example, provide information on gross flows over time between different labour force categories (employed, unemployed and economically inactive). This will provide detail about people who have moved between the categories. Also, longitudinal information is useful in monitoring the effects of government policies and can be used to follow the subsequent activities and circumstances of people affected by specific policy initiatives, and to compare them with other groups in the population. There are however methodological problems which could distort the data resulting from this longitudinal linking. The ONS continues to research these issues and advises that the presentation of results should be carefully considered, and warnings should be included with outputs where necessary.

    LFS Documentation
    The documentation available from the Archive to accompany LFS datasets largely consists of the latest version of each user guide volume alongside the appropriate questionnaire for the year concerned. However, volumes are updated periodically by ONS, so users are advised to check the latest documents on the ONS Labour Force Survey - User Guidance pages before commencing analysis. This is especially important for users of older QLFS studies, where information and guidance in the user guide documents may have changed over time.

    Occupation data for 2021 and 2022 data files

    The ONS has identified an issue with the collection of some occupational data in 2021 and 2022 data files in a number of their surveys. While they estimate any impacts will be small overall, this will affect the accuracy of the breakdowns of some detailed (four-digit Standard Occupational Classification (SOC)) occupations, and data derived from them. Further information can be found in the ONS article published on 11 July 2023: Revision of miscoded occupational data in the ONS Labour Force Survey, UK: January 2021 to September 2022.

    2022 Weighting

    The population totals used for the latest LFS estimates use projected growth rates from Real Time Information (RTI) data for UK, EU and non-EU populations based on 2021 patterns. The total population used for the LFS therefore does not take into account any changes in migration, birth rates, death rates, and so on since June 2021, and hence levels estimates may be under- or over-estimating the true values and should be used with caution. Estimates of rates will, however, be robust.

    Latest edition information

    For the third edition (September 2023), a new version of the data file with revised SOC variables was deposited. Further information on the SOC revisions can be found in the ONS article published on 11 July 2023: Revision of miscoded occupational data in the ONS Labour Force Survey, UK: January 2021 to September 2022.

  13. n

    Data from: Cross-sectional study of Facebook addiction in a sample of...

    • data-staging.niaid.nih.gov
    • data.niaid.nih.gov
    • +2more
    zip
    Updated Oct 21, 2022
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    Alok Atreya; Samata Nepal; Prakash Thapa (2022). Cross-sectional study of Facebook addiction in a sample of Nepalese population [Dataset]. http://doi.org/10.5061/dryad.83bk3j9pv
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    zipAvailable download formats
    Dataset updated
    Oct 21, 2022
    Dataset provided by
    Lumbini Medical College
    Manipal Teaching Hospital
    Authors
    Alok Atreya; Samata Nepal; Prakash Thapa
    License

    https://spdx.org/licenses/CC0-1.0.htmlhttps://spdx.org/licenses/CC0-1.0.html

    Area covered
    Nepal
    Description

    Background: Facebook addiction is said to occur when an individual spends an excessive amount of time on Facebook, disrupting one’s daily activities and social life. The present study aimed to find out the level of Facebook addiction in the Nepalese context and briefly discuss the crimes associated with its unintended use. Methods: A descriptive cross-sectional study was conducted in the Department of Forensic Medicine of Lumbini Medical College. The study instrument was the Bergen Facebook Addiction Scale typed into a Google Form and sent randomly to Facebook contacts of the authors. The responses were downloaded in a Microsoft Excel spreadsheet and analyzed using Statistical Package for Social Sciences version 16. Results: The study consisted of 103 Nepalese participants, of which 54 (52.42%) were males and 49 females (47.58%). There were 11 participants (10.68%) who had more than one Facebook account. When different approaches were applied it was observed that 8.73% (n=9) to 39.80% (n=41) were addicted to Facebook. Conclusion: When used properly Facebook has its own advantages. Excessive use is linked with health hazards including addiction and dependency. Students who engage more on Facebook will have less time studying leading to poor academic performance.People need to be made aware of the issues associated with the misuse of Facebook Methods A descriptive cross-sectional study was conducted in Department of Forensic Medicine of Lumbini Medical College after obtaining ethical approval from the Institutional Review Committee vide the letter IRC-LMC 01-G/019.

    The Bergen Facebook Addiction Scale (BFAS) is a questionnaire that comprises of six core features of addiction: salience, mood modification, tolerance, withdrawal, conflict, and relapse.1 Each of the six-core features consists of three questions, making a total of 18 questions. The final BFAS retained one question for each core element of addiction. Only the scores for questions 1, 5, 7, 11, 13 and 16 determine the level of Facebook addiction. Each question is scored on a 5-point Likert scale using anchors of 1: Very rarely and 5: Very often. Higher scores indicate greater Facebook addiction.

    Participants scoring 4 (often) or 5 (very often) in four out of six questions were considered to be addicted to Facebook. BASF has put forth two scoring schemes to determine Facebook addiction. As per a polythetic scoring scheme, Facebook addiction was determined by a liberal approach, where a score of 3 or more was observed in at least four of six items; whereas using a conservative approach, a score of 3 or above in all six items determined Facebook addiction by a monothetic scoring scheme.

    References:

    1. Andreassen CS, Torsheim T, Brunborg GS, Pallensen S. Development of a facebook addiction scale. Psychol Rep. 2012;110:501-17.
  14. Emotional and tangible social support in a German population-based sample:...

    • figshare.com
    docx
    Updated Jun 1, 2023
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    Manfred E. Beutel; Elmar Brähler; Jörg Wiltink; Matthias Michal; Eva M. Klein; Claus Jünger; Philipp S. Wild; Thomas Münzel; Maria Blettner; Karl Lackner; Stefan Nickels; Ana N. Tibubos (2023). Emotional and tangible social support in a German population-based sample: Development and validation of the Brief Social Support Scale (BS6) [Dataset]. http://doi.org/10.1371/journal.pone.0186516
    Explore at:
    docxAvailable download formats
    Dataset updated
    Jun 1, 2023
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Manfred E. Beutel; Elmar Brähler; Jörg Wiltink; Matthias Michal; Eva M. Klein; Claus Jünger; Philipp S. Wild; Thomas Münzel; Maria Blettner; Karl Lackner; Stefan Nickels; Ana N. Tibubos
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Aim of the study was the development and validation of the psychometric properties of a six-item bi-factorial instrument for the assessment of social support (emotional and tangible support) with a population-based sample. A cross-sectional data set of N = 15,010 participants enrolled in the Gutenberg Health Study (GHS) in 2007–2012 was divided in two sub-samples. The GHS is a population-based, prospective, observational single-center cohort study in the Rhein-Main-Region in western Mid-Germany. The first sub-sample was used for scale development by performing an exploratory factor analysis. In order to test construct validity, confirmatory factor analyses were run to compare the extracted bi-factorial model with the one-factor solution. Reliability of the scales was indicated by calculating internal consistency. External validity was tested by investigating demographic characteristics health behavior, and distress using analysis of variance, Spearman and Pearson correlation analysis, and logistic regression analysis. Based on an exploratory factor analysis, a set of six items was extracted representing two independent factors. The two-factor structure of the Brief Social Support Scale (BS6) was confirmed by the results of the confirmatory factor analyses. Fit indices of the bi-factorial model were good and better compared to the one-factor solution. External validity was demonstrated for the BS6. The BS6 is a reliable and valid short scale that can be applied in social surveys due to its brevity to assess emotional and practical dimensions of social support.

  15. i

    Survey of Income and Living Conditions-Cross-Sectional Database 2017 - North...

    • datacatalog.ihsn.org
    • catalog.ihsn.org
    Updated Dec 5, 2019
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    State Statistical Office of the Republic of Macedonia (2019). Survey of Income and Living Conditions-Cross-Sectional Database 2017 - North Macedonia [Dataset]. https://datacatalog.ihsn.org/catalog/8325
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    Dataset updated
    Dec 5, 2019
    Dataset authored and provided by
    State Statistical Office of the Republic of Macedonia
    Time period covered
    2017
    Area covered
    North Macedonia
    Description

    Abstract

    The Survey of Income and Living Conditions (EU-SILC) is the European Union reference source for comparative statistics on income distribution and social exclusion at the European level, particularly in the context of the 'Programme of Community action to encourage cooperation between Member States to combat social exclusion' and for producing key policy indicators on social cohesion for the follow up of the EU2020 main target on poverty and social inclusion and flagship initiatives in related domains, e.g. in the context of the European Semester. It provides two types of annual data: Cross-sectional data pertaining to a given time or a certain time period with variables on income, poverty, social exclusion and other living conditions, and Longitudinal data pertaining to individual-level changes over time, observed periodically over a four-year period. The first priority is to be given to the delivery of comparable, timely and high quality data. The cross-sectional data is collected in two stages: An early subset of variables collected by register or interview to assess as early as possible poverty trends. A full set of variables provided along with the longitudinal data to produce main key policy indicators on social cohesion.

    Geographic coverage

    National

    Universe

    The reference population of EU-SILC is all private households and their current members residing in the territory of the Member States (MS) at the time of data collection. Persons living in collective households and in institutions are generally excluded from the target population.

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    According to the Commission Regulation on sampling and tracing rules, the selection of the sample will be drawn according to the following requirements: For all components of EU-SILC (whether survey or register based), the cross-sectional and longitudinal (initial sample) data shall be based on a nationally representative probability sample of the population residing in private households within the country, irrespective of language, nationality or legal residence status. All private households and all persons aged 16 and over within the household are eligible for the operation. Representative probability samples shall be achieved both for households, which form the basic units of sampling, data collection and data analysis, and for individual persons in the target population. The sampling frame and methods of sample selection shall ensure that every individual and household in the target population is assigned a known and non-zero probability of selection.

    Mode of data collection

    Face-to-face [f2f]

  16. European Union Statistics on Income and Living Conditions 2010 -...

    • datacatalog.ihsn.org
    • catalog.ihsn.org
    Updated Mar 29, 2019
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    Eurostat (2019). European Union Statistics on Income and Living Conditions 2010 - Cross-Sectional User Database - Cyprus [Dataset]. https://datacatalog.ihsn.org/catalog/5606
    Explore at:
    Dataset updated
    Mar 29, 2019
    Dataset authored and provided by
    Eurostathttps://ec.europa.eu/eurostat
    Time period covered
    2010
    Area covered
    Cyprus
    Description

    Abstract

    In 2010, the EU-SILC instrument covered 32 countries, that is, all EU Member States plus Iceland, Turkey, Norway, Switzerland and Croatia. EU-SILC has become the EU reference source for comparative statistics on income distribution and social exclusion at European level, particularly in the context of the "Program of Community action to encourage cooperation between Member States to combat social exclusion" and for producing structural indicators on social cohesion for the annual spring report to the European Council. The first priority is to be given to the delivery of comparable, timely and high quality cross-sectional data.

    There are two types of datasets: 1) Cross-sectional data pertaining to fixed time periods, with variables on income, poverty, social exclusion and living conditions. 2) Longitudinal data pertaining to individual-level changes over time, observed periodically - usually over four years.

    Social exclusion and housing-condition information is collected at household level. Income at a detailed component level is collected at personal level, with some components included in the "Household" section. Labor, education and health observations only apply to persons aged 16 and over. EU-SILC was established to provide data on structural indicators of social cohesion (at-risk-of-poverty rate, S80/S20 and gender pay gap) and to provide relevant data for the two 'open methods of coordination' in the field of social inclusion and pensions in Europe.

    The 6th version of the 2010 Cross-Sectional User Database as released in July 2015 is documented here.

    Geographic coverage

    The survey covers following countries: Austria; Belgium; Bulgaria; Croatia; Cyprus; Czech Republic; Denmark; Estonia; Finland; France; Germany; Greece; Spain; Ireland; Italy; Latvia; Lithuania; Luxembourg; Hungary; Malta; Netherlands; Poland; Portugal; Romania; Slovenia; Slovakia; Sweden; United Kingdom; Iceland; Norway; Turkey; Switzerland

    Small parts of the national territory amounting to no more than 2% of the national population and the national territories listed below may be excluded from EU-SILC: France - French Overseas Departments and territories; Netherlands - The West Frisian Islands with the exception of Texel; Ireland - All offshore islands with the exception of Achill, Bull, Cruit, Gorumna, Inishnee, Lettermore, Lettermullan and Valentia; United kingdom - Scotland north of the Caledonian Canal, the Scilly Islands.

    Analysis unit

    • Households;
    • Individuals 16 years and older.

    Universe

    The survey covered all household members over 16 years old. Persons living in collective households and in institutions are generally excluded from the target population.

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    On the basis of various statistical and practical considerations and the precision requirements for the most critical variables, the minimum effective sample sizes to be achieved were defined. Sample size for the longitudinal component refers, for any pair of consecutive years, to the number of households successfully interviewed in the first year in which all or at least a majority of the household members aged 16 or over are successfully interviewed in both the years.

    For the cross-sectional component, the plans are to achieve the minimum effective sample size of around 131.000 households in the EU as a whole (137.000 including Iceland and Norway). The allocation of the EU sample among countries represents a compromise between two objectives: the production of results at the level of individual countries, and production for the EU as a whole. Requirements for the longitudinal data will be less important. For this component, an effective sample size of around 98.000 households (103.000 including Iceland and Norway) is planned.

    Member States using registers for income and other data may use a sample of persons (selected respondents) rather than a sample of complete households in the interview survey. The minimum effective sample size in terms of the number of persons aged 16 or over to be interviewed in detail is in this case taken as 75 % of the figures shown in columns 3 and 4 of the table I, for the cross-sectional and longitudinal components respectively.

    The reference is to the effective sample size, which is the size required if the survey were based on simple random sampling (design effect in relation to the 'risk of poverty rate' variable = 1.0). The actual sample sizes will have to be larger to the extent that the design effects exceed 1.0 and to compensate for all kinds of non-response. Furthermore, the sample size refers to the number of valid households which are households for which, and for all members of which, all or nearly all the required information has been obtained. For countries with a sample of persons design, information on income and other data shall be collected for the household of each selected respondent and for all its members.

    At the beginning, a cross-sectional representative sample of households is selected. It is divided into say 4 sub-samples, each by itself representative of the whole population and similar in structure to the whole sample. One sub-sample is purely cross-sectional and is not followed up after the first round. Respondents in the second sub-sample are requested to participate in the panel for 2 years, in the third sub-sample for 3 years, and in the fourth for 4 years. From year 2 onwards, one new panel is introduced each year, with request for participation for 4 years. In any one year, the sample consists of 4 sub-samples, which together constitute the cross-sectional sample. In year 1 they are all new samples; in all subsequent years, only one is new sample. In year 2, three are panels in the second year; in year 3, one is a panel in the second year and two in the third year; in subsequent years, one is a panel for the second year, one for the third year, and one for the fourth (final) year.

    According to the Commission Regulation on sampling and tracing rules, the selection of the sample will be drawn according to the following requirements:

    1. For all components of EU-SILC (whether survey or register based), the crosssectional and longitudinal (initial sample) data shall be based on a nationally representative probability sample of the population residing in private households within the country, irrespective of language, nationality or legal residence status. All private households and all persons aged 16 and over within the household are eligible for the operation.
    2. Representative probability samples shall be achieved both for households, which form the basic units of sampling, data collection and data analysis, and for individual persons in the target population.
    3. The sampling frame and methods of sample selection shall ensure that every individual and household in the target population is assigned a known and non-zero probability of selection.
    4. By way of exception, paragraphs 1 to 3 shall apply in Germany exclusively to the part of the sample based on probability sampling according to Article 8 of the Regulation of the European Parliament and of the Council (EC) No 1177/2003 concerning

    Community Statistics on Income and Living Conditions. Article 8 of the EU-SILC Regulation of the European Parliament and of the Council mentions: 1. The cross-sectional and longitudinal data shall be based on nationally representative probability samples. 2. By way of exception to paragraph 1, Germany shall supply cross-sectional data based on a nationally representative probability sample for the first time for the year 2008. For the year 2005, Germany shall supply data for one fourth based on probability sampling and for three fourths based on quota samples, the latter to be progressively replaced by random selection so as to achieve fully representative probability sampling by 2008. For the longitudinal component, Germany shall supply for the year 2006 one third of longitudinal data (data for year 2005 and 2006) based on probability sampling and two thirds based on quota samples. For the year 2007, half of the longitudinal data relating to years 2005, 2006 and 2007 shall be based on probability sampling and half on quota sample. After 2007 all of the longitudinal data shall be based on probability sampling.

    Detailed information about sampling is available in Quality Reports in Related Materials.

    Mode of data collection

    Mixed

  17. European Union Statistics on Income and Living Conditions 2005 -...

    • catalog.ihsn.org
    Updated Mar 29, 2019
    + more versions
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    Eurostat (2019). European Union Statistics on Income and Living Conditions 2005 - Cross-Sectional User Database - Spain [Dataset]. https://catalog.ihsn.org/catalog/5628
    Explore at:
    Dataset updated
    Mar 29, 2019
    Dataset authored and provided by
    Eurostathttps://ec.europa.eu/eurostat
    Time period covered
    2005
    Area covered
    Spain
    Description

    Abstract

    EU-SILC has become the EU reference source for comparative statistics on income distribution and social exclusion at European level, particularly in the context of the "Program of Community action to encourage cooperation between Member States to combat social exclusion" and for producing structural indicators on social cohesion for the annual spring report to the European Council. The first priority is to be given to the delivery of comparable, timely and high quality cross-sectional data.

    Social exclusion and housing-condition information is collected at household level. Income at a detailed component level is collected at personal level, with some components included in the "Household" section. Labour, education and health observations only apply to persons 16 and older. EU-SILC was established to provide data on structural indicators of social cohesion (at-risk-of-poverty rate, S80/S20 and gender pay gap) and to provide relevant data for the two 'open methods of coordination' in the field of social inclusion and pensions in Europe.

    EU-SILC produces two types of datasets: 1) Cross-sectional data pertaining to fixed time periods, with variables on income, poverty, social exclusion and living conditions. 2) Longitudinal data pertaining to individual-level changes over time, observed periodically - usually over four years.

    The fifth revision of the 2005 Cross-Sectional User Database (UDB) as released by Eurostat in August 2009 is documented here.

    Geographic coverage

    National

    Analysis unit

    • Households;
    • Individuals 16 years and older.

    Universe

    The survey covered all household members over 16 years old. Persons living in collective households and in institutions are generally excluded from the target population.

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    On the basis of various statistical and practical considerations and the precision requirements for the most critical variables, the minimum effective sample sizes to be achieved were defined. Sample size for the longitudinal component refers, for any pair of consecutive years, to the number of households successfully interviewed in the first year in which all or at least a majority of the household members aged 16 or over are successfully interviewed in both the years.

    The cross-sectional sample sizes were calculated in order to achieve an effective size of 121,000 households at the European level (127,000 including Iceland and Norway). Then, the allocation among the countries aims to ensure a minimum precision for each of them.

    Member States using registers for income and other data may use a sample of persons (selected respondents) rather than a sample of complete households in the interview survey. The minimum effective sample size in terms of the number of persons aged 16 or over to be interviewed in detail is in this case taken as 75 % of the figures shown in columns 3 and 4 of the table I, for the cross-sectional and longitudinal components respectively.

    The reference is to the effective sample size, which is the size required if the survey were based on simple random sampling (design effect in relation to the 'risk of poverty rate' variable = 1.0). The actual sample sizes will have to be larger to the extent that the design effects exceed 1.0 and to compensate for all kinds of non-response. Furthermore, the sample size refers to the number of valid households which are households for which, and for all members of which, all or nearly all the required information has been obtained. For countries with a sample of persons design, information on income and other data shall be collected for the household of each selected respondent and for all its members.

    At the beginning, a cross-sectional representative sample of households is selected. It is divided into say 4 sub-samples, each by itself representative of the whole population and similar in structure to the whole sample. One sub-sample is purely cross-sectional and is not followed up after the first round. Respondents in the second sub-sample are requested to participate in the panel for 2 years, in the third sub-sample for 3 years, and in the fourth for 4 years. From year 2 onwards, one new panel is introduced each year, with request for participation for 4 years. In any one year, the sample consists of 4 sub-samples, which together constitute the cross-sectional sample. In year 1 they are all new samples; in all subsequent years, only one is new sample. In year 2, three are panels in the second year; in year 3, one is a panel in the second year and two in the third year; in subsequent years, one is a panel for the second year, one for the third year, and one for the fourth (final) year.

    According to the Commission Regulation on sampling and tracing rules, the selection of the sample will be drawn according to the following requirements:

    1. For all components of EU-SILC (whether survey or register based), the crosssectional and longitudinal (initial sample) data shall be based on a nationally representative probability sample of the population residing in private households within the country, irrespective of language, nationality or legal residence status. All private households and all persons aged 16 and over within the household are eligible for the operation.
    2. Representative probability samples shall be achieved both for households, which form the basic units of sampling, data collection and data analysis, and for individual persons in the target population.
    3. The sampling frame and methods of sample selection shall ensure that every individual and household in the target population is assigned a known and non-zero probability of selection.
    4. By way of exception, paragraphs 1 to 3 shall apply in Germany exclusively to the part of the sample based on probability sampling according to Article 8 of the Regulation of the European Parliament and of the Council (EC) No 1177/2003 concerning

    Community Statistics on Income and Living Conditions. Article 8 of the EU-SILC Regulation of the European Parliament and of the Council mentions: 1. The cross-sectional and longitudinal data shall be based on nationally representative probability samples. 2. By way of exception to paragraph 1, Germany shall supply cross-sectional data based on a nationally representative probability sample for the first time for the year 2008. For the year 2005, Germany shall supply data for one fourth based on probability sampling and for three fourths based on quota samples, the latter to be progressively replaced by random selection so as to achieve fully representative probability sampling by 2008. For the longitudinal component, Germany shall supply for the year 2006 one third of longitudinal data (data for year 2005 and 2006) based on probability sampling and two thirds based on quota samples. For the year 2007, half of the longitudinal data relating to years 2005, 2006 and 2007 shall be based on probability sampling and half on quota sample. After 2007 all of the longitudinal data shall be based on probability sampling.

    Mode of data collection

    Mixed

  18. European Union Statistics on Income and Living Conditions 2006 -...

    • catalog.ihsn.org
    Updated Mar 29, 2019
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    Eurostat (2019). European Union Statistics on Income and Living Conditions 2006 - Cross-Sectional User Database - Czech Republic [Dataset]. https://catalog.ihsn.org/index.php/catalog/5610
    Explore at:
    Dataset updated
    Mar 29, 2019
    Dataset authored and provided by
    Eurostathttps://ec.europa.eu/eurostat
    Time period covered
    2006
    Area covered
    European Union, Czech Republic
    Description

    Abstract

    EU-SILC has become the EU reference source for comparative statistics on income distribution and social exclusion at European level, particularly in the context of the "Program of Community action to encourage cooperation between Member States to combat social exclusion" and for producing structural indicators on social cohesion for the annual spring report to the European Council. The first priority is to be given to the delivery of comparable, timely and high quality cross-sectional data.

    Social exclusion and housing-condition information is collected at household level. Income at a detailed component level is collected at personal level, with some components included in the "Household" section. Labour, education and health observations only apply to persons 16 and older. EU-SILC was established to provide data on structural indicators of social cohesion (at-risk-of-poverty rate, S80/S20 and gender pay gap) and to provide relevant data for the two 'open methods of coordination' in the field of social inclusion and pensions in Europe.

    EU-SILC produces two types of datasets: 1) Cross-sectional data pertaining to fixed time periods, with variables on income, poverty, social exclusion and living conditions. 2) Longitudinal data pertaining to individual-level changes over time, observed periodically - usually over four years.

    This is the fourth release of 2006 Cross-Sectional Dataset, as published by Eurostat in March 2010.

    Geographic coverage

    National

    Analysis unit

    • Households;
    • Individuals 16 years and older.

    Universe

    The survey covered all household members over 16 years old. Persons living in collective households and in institutions are generally excluded from the target population.

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    On the basis of various statistical and practical considerations and the precision requirements for the most critical variables, the minimum effective sample sizes to be achieved were defined. Sample size for the longitudinal component refers, for any pair of consecutive years, to the number of households successfully interviewed in the first year in which all or at least a majority of the household members aged 16 or over are successfully interviewed in both the years.

    The cross-sectional sample sizes were calculated in order to achieve an effective size of 121,000 households at the European level (127,000 including Iceland and Norway). Then, the allocation among the countries aims to ensure a minimum precision for each of them.

    Member States using registers for income and other data may use a sample of persons (selected respondents) rather than a sample of complete households in the interview survey. The minimum effective sample size in terms of the number of persons aged 16 or over to be interviewed in detail is in this case taken as 75 % of the figures shown in columns 3 and 4 of the table I, for the cross-sectional and longitudinal components respectively.

    The reference is to the effective sample size, which is the size required if the survey were based on simple random sampling (design effect in relation to the 'risk of poverty rate' variable = 1.0). The actual sample sizes will have to be larger to the extent that the design effects exceed 1.0 and to compensate for all kinds of non-response. Furthermore, the sample size refers to the number of valid households which are households for which, and for all members of which, all or nearly all the required information has been obtained. For countries with a sample of persons design, information on income and other data shall be collected for the household of each selected respondent and for all its members.

    At the beginning, a cross-sectional representative sample of households is selected. It is divided into say 4 sub-samples, each by itself representative of the whole population and similar in structure to the whole sample. One sub-sample is purely cross-sectional and is not followed up after the first round. Respondents in the second sub-sample are requested to participate in the panel for 2 years, in the third sub-sample for 3 years, and in the fourth for 4 years. From year 2 onwards, one new panel is introduced each year, with request for participation for 4 years. In any one year, the sample consists of 4 sub-samples, which together constitute the cross-sectional sample. In year 1 they are all new samples; in all subsequent years, only one is new sample. In year 2, three are panels in the second year; in year 3, one is a panel in the second year and two in the third year; in subsequent years, one is a panel for the second year, one for the third year, and one for the fourth (final) year.

    According to the Commission Regulation on sampling and tracing rules, the selection of the sample will be drawn according to the following requirements:

    1. For all components of EU-SILC (whether survey or register based), the crosssectional and longitudinal (initial sample) data shall be based on a nationally representative probability sample of the population residing in private households within the country, irrespective of language, nationality or legal residence status. All private households and all persons aged 16 and over within the household are eligible for the operation.
    2. Representative probability samples shall be achieved both for households, which form the basic units of sampling, data collection and data analysis, and for individual persons in the target population.
    3. The sampling frame and methods of sample selection shall ensure that every individual and household in the target population is assigned a known and non-zero probability of selection.
    4. By way of exception, paragraphs 1 to 3 shall apply in Germany exclusively to the part of the sample based on probability sampling according to Article 8 of the Regulation of the European Parliament and of the Council (EC) No 1177/2003 concerning

    Community Statistics on Income and Living Conditions. Article 8 of the EU-SILC Regulation of the European Parliament and of the Council mentions: 1. The cross-sectional and longitudinal data shall be based on nationally representative probability samples. 2. By way of exception to paragraph 1, Germany shall supply cross-sectional data based on a nationally representative probability sample for the first time for the year 2008. For the year 2005, Germany shall supply data for one fourth based on probability sampling and for three fourths based on quota samples, the latter to be progressively replaced by random selection so as to achieve fully representative probability sampling by 2008. For the longitudinal component, Germany shall supply for the year 2006 one third of longitudinal data (data for year 2005 and 2006) based on probability sampling and two thirds based on quota samples. For the year 2007, half of the longitudinal data relating to years 2005, 2006 and 2007 shall be based on probability sampling and half on quota sample. After 2007 all of the longitudinal data shall be based on probability sampling.

    Mode of data collection

    Mixed

  19. European Union Statistics on Income and Living Conditions 2007 -...

    • catalog.ihsn.org
    Updated Mar 29, 2019
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    Eurostat (2019). European Union Statistics on Income and Living Conditions 2007 - Cross-Sectional User Database - Portugal [Dataset]. https://catalog.ihsn.org/index.php/catalog/5759
    Explore at:
    Dataset updated
    Mar 29, 2019
    Dataset authored and provided by
    Eurostathttps://ec.europa.eu/eurostat
    Time period covered
    2007
    Area covered
    Portugal
    Description

    Abstract

    In 2007, the EU-SILC instrument covered all EU Member States plus Iceland, Turkey, Norway, Switzerland and Croatia. EU-SILC has become the EU reference source for comparative statistics on income distribution and social exclusion at European level, particularly in the context of the "Program of Community action to encourage cooperation between Member States to combat social exclusion" and for producing structural indicators on social cohesion for the annual spring report to the European Council. The first priority is to be given to the delivery of comparable, timely and high quality cross-sectional data.

    There are two types of datasets: 1) Cross-sectional data pertaining to fixed time periods, with variables on income, poverty, social exclusion and living conditions. 2) Longitudinal data pertaining to individual-level changes over time, observed periodically - usually over four years.

    Social exclusion and housing-condition information is collected at household level. Income at a detailed component level is collected at personal level, with some components included in the "Household" section. Labor, education and health observations only apply to persons aged 16 and over. EU-SILC was established to provide data on structural indicators of social cohesion (at-risk-of-poverty rate, S80/S20 and gender pay gap) and to provide relevant data for the two 'open methods of coordination' in the field of social inclusion and pensions in Europe.

    The sixth revision of the 2007 Cross-Sectional User Database is documented here.

    Geographic coverage

    National

    Analysis unit

    • Households;
    • Individuals 16 years and older.

    Universe

    The survey covered all household members over 16 years old. Persons living in collective households and in institutions are generally excluded from the target population.

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    On the basis of various statistical and practical considerations and the precision requirements for the most critical variables, the minimum effective sample sizes to be achieved were defined. Sample size for the longitudinal component refers, for any pair of consecutive years, to the number of households successfully interviewed in the first year in which all or at least a majority of the household members aged 16 or over are successfully interviewed in both the years.

    For the cross-sectional component, the plans are to achieve the minimum effective sample size of around 131.000 households in the EU as a whole (137.000 including Iceland and Norway). The allocation of the EU sample among countries represents a compromise between two objectives: the production of results at the level of individual countries, and production for the EU as a whole. Requirements for the longitudinal data will be less important. For this component, an effective sample size of around 98.000 households (103.000 including Iceland and Norway) is planned.

    Member States using registers for income and other data may use a sample of persons (selected respondents) rather than a sample of complete households in the interview survey. The minimum effective sample size in terms of the number of persons aged 16 or over to be interviewed in detail is in this case taken as 75 % of the figures shown in columns 3 and 4 of the table I, for the cross-sectional and longitudinal components respectively.

    The reference is to the effective sample size, which is the size required if the survey were based on simple random sampling (design effect in relation to the 'risk of poverty rate' variable = 1.0). The actual sample sizes will have to be larger to the extent that the design effects exceed 1.0 and to compensate for all kinds of non-response. Furthermore, the sample size refers to the number of valid households which are households for which, and for all members of which, all or nearly all the required information has been obtained. For countries with a sample of persons design, information on income and other data shall be collected for the household of each selected respondent and for all its members.

    At the beginning, a cross-sectional representative sample of households is selected. It is divided into say 4 sub-samples, each by itself representative of the whole population and similar in structure to the whole sample. One sub-sample is purely cross-sectional and is not followed up after the first round. Respondents in the second sub-sample are requested to participate in the panel for 2 years, in the third sub-sample for 3 years, and in the fourth for 4 years. From year 2 onwards, one new panel is introduced each year, with request for participation for 4 years. In any one year, the sample consists of 4 sub-samples, which together constitute the cross-sectional sample. In year 1 they are all new samples; in all subsequent years, only one is new sample. In year 2, three are panels in the second year; in year 3, one is a panel in the second year and two in the third year; in subsequent years, one is a panel for the second year, one for the third year, and one for the fourth (final) year.

    According to the Commission Regulation on sampling and tracing rules, the selection of the sample will be drawn according to the following requirements:

    1. For all components of EU-SILC (whether survey or register based), the crosssectional and longitudinal (initial sample) data shall be based on a nationally representative probability sample of the population residing in private households within the country, irrespective of language, nationality or legal residence status. All private households and all persons aged 16 and over within the household are eligible for the operation.
    2. Representative probability samples shall be achieved both for households, which form the basic units of sampling, data collection and data analysis, and for individual persons in the target population.
    3. The sampling frame and methods of sample selection shall ensure that every individual and household in the target population is assigned a known and non-zero probability of selection.
    4. By way of exception, paragraphs 1 to 3 shall apply in Germany exclusively to the part of the sample based on probability sampling according to Article 8 of the Regulation of the European Parliament and of the Council (EC) No 1177/2003 concerning

    Community Statistics on Income and Living Conditions. Article 8 of the EU-SILC Regulation of the European Parliament and of the Council mentions: 1. The cross-sectional and longitudinal data shall be based on nationally representative probability samples. 2. By way of exception to paragraph 1, Germany shall supply cross-sectional data based on a nationally representative probability sample for the first time for the year 2008. For the year 2005, Germany shall supply data for one fourth based on probability sampling and for three fourths based on quota samples, the latter to be progressively replaced by random selection so as to achieve fully representative probability sampling by 2008. For the longitudinal component, Germany shall supply for the year 2006 one third of longitudinal data (data for year 2005 and 2006) based on probability sampling and two thirds based on quota samples. For the year 2007, half of the longitudinal data relating to years 2005, 2006 and 2007 shall be based on probability sampling and half on quota sample. After 2007 all of the longitudinal data shall be based on probability sampling.

    Detailed information about sampling is available in Quality Reports in Documentation.

    Mode of data collection

    Mixed

  20. European Union Statistics on Income and Living Conditions 2006 -...

    • catalog.ihsn.org
    Updated Mar 29, 2019
    Share
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    Eurostat (2019). European Union Statistics on Income and Living Conditions 2006 - Cross-Sectional User Database - Estonia [Dataset]. https://catalog.ihsn.org/index.php/catalog/5635
    Explore at:
    Dataset updated
    Mar 29, 2019
    Dataset authored and provided by
    Eurostathttps://ec.europa.eu/eurostat
    Time period covered
    2006
    Area covered
    Estonia
    Description

    Abstract

    In 2006, the EU-SILC instrument covered all EU Member States plus Iceland, Turkey, Norway, Switzerland and Croatia. EU-SILC has become the EU reference source for comparative statistics on income distribution and social exclusion at European level, particularly in the context of the "Program of Community action to encourage cooperation between Member States to combat social exclusion" and for producing structural indicators on social cohesion for the annual spring report to the European Council. The first priority is to be given to the delivery of comparable, timely and high quality cross-sectional data.

    There are two types of datasets: 1) Cross-sectional data pertaining to fixed time periods, with variables on income, poverty, social exclusion and living conditions. 2) Longitudinal data pertaining to individual-level changes over time, observed periodically - usually over four years.

    Social exclusion and housing-condition information is collected at household level. Income at a detailed component level is collected at personal level, with some components included in the "Household" section. Labor, education and health observations only apply to persons aged 16 and over. EU-SILC was established to provide data on structural indicators of social cohesion (at-risk-of-poverty rate, S80/S20 and gender pay gap) and to provide relevant data for the two 'open methods of coordination' in the field of social inclusion and pensions in Europe.

    The fourth revision of the 2006 Cross-Sectional User Database is documented here.

    Geographic coverage

    National

    Analysis unit

    • Households;
    • Individuals 16 years and older.

    Universe

    The survey covered all household members over 16 years old. Persons living in collective households and in institutions are generally excluded from the target population.

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    On the basis of various statistical and practical considerations and the precision requirements for the most critical variables, the minimum effective sample sizes to be achieved were defined. Sample size for the longitudinal component refers, for any pair of consecutive years, to the number of households successfully interviewed in the first year in which all or at least a majority of the household members aged 16 or over are successfully interviewed in both the years.

    For the cross-sectional component, the plans are to achieve the minimum effective sample size of around 131.000 households in the EU as a whole (137.000 including Iceland and Norway). The allocation of the EU sample among countries represents a compromise between two objectives: the production of results at the level of individual countries, and production for the EU as a whole. Requirements for the longitudinal data will be less important. For this component, an effective sample size of around 98.000 households (103.000 including Iceland and Norway) is planned.

    Member States using registers for income and other data may use a sample of persons (selected respondents) rather than a sample of complete households in the interview survey. The minimum effective sample size in terms of the number of persons aged 16 or over to be interviewed in detail is in this case taken as 75 % of the figures shown in columns 3 and 4 of the table I, for the cross-sectional and longitudinal components respectively.

    The reference is to the effective sample size, which is the size required if the survey were based on simple random sampling (design effect in relation to the 'risk of poverty rate' variable = 1.0). The actual sample sizes will have to be larger to the extent that the design effects exceed 1.0 and to compensate for all kinds of non-response. Furthermore, the sample size refers to the number of valid households which are households for which, and for all members of which, all or nearly all the required information has been obtained. For countries with a sample of persons design, information on income and other data shall be collected for the household of each selected respondent and for all its members.

    At the beginning, a cross-sectional representative sample of households is selected. It is divided into say 4 sub-samples, each by itself representative of the whole population and similar in structure to the whole sample. One sub-sample is purely cross-sectional and is not followed up after the first round. Respondents in the second sub-sample are requested to participate in the panel for 2 years, in the third sub-sample for 3 years, and in the fourth for 4 years. From year 2 onwards, one new panel is introduced each year, with request for participation for 4 years. In any one year, the sample consists of 4 sub-samples, which together constitute the cross-sectional sample. In year 1 they are all new samples; in all subsequent years, only one is new sample. In year 2, three are panels in the second year; in year 3, one is a panel in the second year and two in the third year; in subsequent years, one is a panel for the second year, one for the third year, and one for the fourth (final) year.

    According to the Commission Regulation on sampling and tracing rules, the selection of the sample will be drawn according to the following requirements:

    1. For all components of EU-SILC (whether survey or register based), the crosssectional and longitudinal (initial sample) data shall be based on a nationally representative probability sample of the population residing in private households within the country, irrespective of language, nationality or legal residence status. All private households and all persons aged 16 and over within the household are eligible for the operation.
    2. Representative probability samples shall be achieved both for households, which form the basic units of sampling, data collection and data analysis, and for individual persons in the target population.
    3. The sampling frame and methods of sample selection shall ensure that every individual and household in the target population is assigned a known and non-zero probability of selection.
    4. By way of exception, paragraphs 1 to 3 shall apply in Germany exclusively to the part of the sample based on probability sampling according to Article 8 of the Regulation of the European Parliament and of the Council (EC) No 1177/2003 concerning

    Community Statistics on Income and Living Conditions. Article 8 of the EU-SILC Regulation of the European Parliament and of the Council mentions: 1. The cross-sectional and longitudinal data shall be based on nationally representative probability samples. 2. By way of exception to paragraph 1, Germany shall supply cross-sectional data based on a nationally representative probability sample for the first time for the year 2008. For the year 2005, Germany shall supply data for one fourth based on probability sampling and for three fourths based on quota samples, the latter to be progressively replaced by random selection so as to achieve fully representative probability sampling by 2008. For the longitudinal component, Germany shall supply for the year 2006 one third of longitudinal data (data for year 2005 and 2006) based on probability sampling and two thirds based on quota samples. For the year 2007, half of the longitudinal data relating to years 2005, 2006 and 2007 shall be based on probability sampling and half on quota sample. After 2007 all of the longitudinal data shall be based on probability sampling.

    Detailed information about sampling is available in Quality Reports in Documentation.

    Mode of data collection

    Mixed

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Adam Baimel (2023). Dataset #1: Cross-sectional survey data [Dataset]. http://doi.org/10.6084/m9.figshare.23708730.v1
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Dataset #1: Cross-sectional survey data

Explore at:
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Dataset updated
Jul 19, 2023
Dataset provided by
Figsharehttp://figshare.com/
Authors
Adam Baimel
License

Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically

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Sample information: How many and who are your participants? Demographic summaries are helpful additions to this section.

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