100+ datasets found
  1. Sample distribution by Demographic Factors (N = 384).

    • plos.figshare.com
    xls
    Updated Jun 1, 2023
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    Amy Brown; Michelle Lee (2023). Sample distribution by Demographic Factors (N = 384). [Dataset]. http://doi.org/10.1371/journal.pone.0054229.t002
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    xlsAvailable download formats
    Dataset updated
    Jun 1, 2023
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Amy Brown; Michelle Lee
    License

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

    Description

    Sample distribution by Demographic Factors (N = 384).

  2. Demographic and Health Survey 2013 - Turkiye

    • microdata.worldbank.org
    • catalog.ihsn.org
    Updated Jun 13, 2022
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    Hacettepe University Institute of Population Studies (HUIPS) (2022). Demographic and Health Survey 2013 - Turkiye [Dataset]. https://microdata.worldbank.org/index.php/catalog/3453
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    Dataset updated
    Jun 13, 2022
    Dataset provided by
    Hacettepe University Institute of Population Studies
    Authors
    Hacettepe University Institute of Population Studies (HUIPS)
    Time period covered
    2013 - 2014
    Area covered
    Türkiye
    Description

    Abstract

    The 2013 Turkey Demographic and Health Survey (TDHS-2013) is a nationally representative sample survey. The primary objective of the TDHS-2013 is to provide data on socioeconomic characteristics of households and women between ages 15-49, fertility, childhood mortality, marriage patterns, family planning, maternal and child health, nutritional status of women and children, and reproductive health. The survey obtained detailed information on these issues from a sample of women of reproductive age (15-49). The TDHS-2013 was designed to produce information in the field of demography and health that to a large extent cannot be obtained from other sources.

    Specifically, the objectives of the TDHS-2013 included: - Collecting data at the national level that allows the calculation of some demographic and health indicators, particularly fertility rates and childhood mortality rates, - Obtaining information on direct and indirect factors that determine levels and trends in fertility and childhood mortality, - Measuring the level of contraceptive knowledge and practice by contraceptive method and some background characteristics, i.e., region and urban-rural residence, - Collecting data relative to maternal and child health, including immunizations, antenatal care, and postnatal care, assistance at delivery, and breastfeeding, - Measuring the nutritional status of children under five and women in the reproductive ages, - Collecting data on reproductive-age women about marriage, employment status, and social status

    The TDHS-2013 information is intended to provide data to assist policy makers and administrators to evaluate existing programs and to design new strategies for improving demographic, social and health policies in Turkey. Another important purpose of the TDHS-2013 is to sustain the flow of information for the interested organizations in Turkey and abroad on the Turkish population structure in the absence of a reliable and sufficient vital registration system. Additionally, like the TDHS-2008, TDHS-2013 is accepted as a part of the Official Statistic Program.

    Geographic coverage

    National coverage

    Analysis unit

    • Household
    • Women age 15-49
    • Children under age of five

    Universe

    The survey covered all de jure household members (usual residents), children age 0-5 years and women age 15-49 years resident in the household.

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    The sample design and sample size for the TDHS-2013 makes it possible to perform analyses for Turkey as a whole, for urban and rural areas, and for the five demographic regions of the country (West, South, Central, North, and East). The TDHS-2013 sample is of sufficient size to allow for analysis on some of the survey topics at the level of the 12 geographical regions (NUTS 1) which were adopted at the second half of the year 2002 within the context of Turkey’s move to join the European Union.

    In the selection of the TDHS-2013 sample, a weighted, multi-stage, stratified cluster sampling approach was used. Sample selection for the TDHS-2013 was undertaken in two stages. The first stage of selection included the selection of blocks as primary sampling units from each strata and this task was requested from the TURKSTAT. The frame for the block selection was prepared using information on the population sizes of settlements obtained from the 2012 Address Based Population Registration System. Settlements with a population of 10,000 and more were defined as “urban”, while settlements with populations less than 10,000 were considered “rural” for purposes of the TDHS-2013 sample design. Systematic selection was used for selecting the blocks; thus settlements were given selection probabilities proportional to their sizes. Therefore more blocks were sampled from larger settlements.

    The second stage of sample selection involved the systematic selection of a fixed number of households from each block, after block lists were obtained from TURKSTAT and were updated through a field operation; namely the listing and mapping fieldwork. Twentyfive households were selected as a cluster from urban blocks, and 18 were selected as a cluster from rural blocks. The total number of households selected in TDHS-2013 is 14,490.

    The total number of clusters in the TDHS-2013 was set at 642. Block level household lists, each including approximately 100 households, were provided by TURKSTAT, using the National Address Database prepared for municipalities. The block lists provided by TURKSTAT were updated during the listing and mapping activities.

    All women at ages 15-49 who usually live in the selected households and/or were present in the household the night before the interview were regarded as eligible for the Women’s Questionnaire and were interviewed. All analysis in this report is based on de facto women.

    Note: A more technical and detailed description of the TDHS-2013 sample design, selection and implementation is presented in Appendix B of the final report of the survey.

    Mode of data collection

    Face-to-face [f2f]

    Research instrument

    Two main types of questionnaires were used to collect the TDHS-2013 data: the Household Questionnaire and the Individual Questionnaire for all women of reproductive age. The contents of these questionnaires were based on the DHS core questionnaire. Additions, deletions and modifications were made to the DHS model questionnaire in order to collect information particularly relevant to Turkey. Attention also was paid to ensuring the comparability of the TDHS-2013 findings with previous demographic surveys carried out by the Hacettepe Institute of Population Studies. In the process of designing the TDHS-2013 questionnaires, national and international population and health agencies were consulted for their comments.

    The questionnaires were developed in Turkish and translated into English.

    Cleaning operations

    TDHS-2013 questionnaires were returned to the Hacettepe University Institute of Population Studies by the fieldwork teams for data processing as soon as interviews were completed in a province. The office editing staff checked that the questionnaires for all selected households and eligible respondents were returned from the field. A total of 29 data entry staff were trained for data entry activities of the TDHS-2013. The data entry of the TDHS-2013 began in late September 2013 and was completed at the end of January 2014.

    The data were entered and edited on microcomputers using the Census and Survey Processing System (CSPro) software. CSPro is designed to fulfill the census and survey data processing needs of data-producing organizations worldwide. CSPro is developed by MEASURE partners, the U.S. Bureau of the Census, ICF International’s DHS Program, and SerPro S.A. CSPro allows range, skip, and consistency errors to be detected and corrected at the data entry stage. During the data entry process, 100% verification was performed by entering each questionnaire twice using different data entry operators and comparing the entered data.

    Response rate

    In all, 14,490 households were selected for the TDHS-2013. At the time of the listing phase of the survey, 12,640 households were considered occupied and, thus, eligible for interview. Of the eligible households, 93 percent (11,794) households were successfully interviewed. The main reasons the field teams were unable to interview some households were because some dwelling units that had been listed were found to be vacant at the time of the interview or the household was away for an extended period.

    In the interviewed 11,794 households, 10,840 women were identified as eligible for the individual interview, aged 15-49 and were present in the household on the night before the interview. Interviews were successfully completed with 9,746 of these women (90 percent). Among the eligible women not interviewed in the survey, the principal reason for nonresponse was the failure to find the women at home after repeated visits to the household.

    Sampling error estimates

    The estimates from a sample survey are affected by two types of errors: (1) nonsampling errors, and (2) sampling errors. Nonsampling errors are the results of mistakes made in implementing data collection and data processing, such as failure to locate and interview the correct household, misunderstanding of the questions on the part of either the interviewer or the respondent, and data entry errors. Although numerous efforts were made during the implementation of the TDHS-2013 to minimize this type of error, nonsampling errors are impossible to avoid and difficult to evaluate statistically.

    Sampling errors, on the other hand, can be evaluated statistically. The sample of respondents selected in the TDHS-2013 is only one of many samples that could have been selected from the same population, using the same design and expected size. Each of these samples would yield results that differ somewhat from the results of the actual sample selected. Sampling errors are a measure of the variability between all possible samples. Although the degree of variability is not known exactly, it can be estimated from the survey results.

    A sampling error is usually measured in terms of the standard error for a particular statistic (mean, percentage, etc.), which is the square root of the variance. The standard error can be used to calculate confidence intervals within which the true value for the population can reasonably be assumed to fall. For example, for any given statistic calculated from a sample survey, the value of that statistic will fall

  3. f

    Demographic factors and cancer type of interview sample.*

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated Aug 10, 2012
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    White, Martin; Noble, Emma; Moffatt, Suzanne (2012). Demographic factors and cancer type of interview sample.* [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001124774
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    Dataset updated
    Aug 10, 2012
    Authors
    White, Martin; Noble, Emma; Moffatt, Suzanne
    Description

    *Demographic information collected for 35 interviewees and one carer.

  4. Socio-demographic variables and religious, social, and cultural motivations....

    • plos.figshare.com
    xls
    Updated Jun 21, 2023
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    Tahani Hassan; Mauricio Carvache-Franco; Orly Carvache-Franco; Wilmer Carvache-Franco (2023). Socio-demographic variables and religious, social, and cultural motivations. [Dataset]. http://doi.org/10.1371/journal.pone.0283720.t002
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    xlsAvailable download formats
    Dataset updated
    Jun 21, 2023
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Tahani Hassan; Mauricio Carvache-Franco; Orly Carvache-Franco; Wilmer Carvache-Franco
    License

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

    Description

    Socio-demographic variables and religious, social, and cultural motivations.

  5. f

    Data from: Sample demographics.

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated Apr 23, 2025
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    Campbell, Lucy; Heslin, Margaret; Hughes, Elizabeth; Stewart, Robert; Williams, Julie; Pittrof, Rudiger; Jewell, Amelia; Trevillion, Kylee; Sullivan, Ann; Tassie, Emma; King, Helena; Smith, Shubulade; Covshoff, Elana; Croxford, Sara; Newson, Michael; Hunt, Olivia (2025). Sample demographics. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0002103846
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    Dataset updated
    Apr 23, 2025
    Authors
    Campbell, Lucy; Heslin, Margaret; Hughes, Elizabeth; Stewart, Robert; Williams, Julie; Pittrof, Rudiger; Jewell, Amelia; Trevillion, Kylee; Sullivan, Ann; Tassie, Emma; King, Helena; Smith, Shubulade; Covshoff, Elana; Croxford, Sara; Newson, Michael; Hunt, Olivia
    Description

    BackgroundMental health professionals play a crucial role in promoting the physical well-being of people with mental illness. Awareness of HIV status can enable professionals in mental health services to provide more comprehensive care. However, it remains uncertain whether mental health professionals consistently document HIV status in mental health records.AimsTo investigate the extent to which mental health professionals document previously established HIV diagnoses of people with mental illness in mental health records, and to identify the clinical and demographic factors associated with documentation or lack thereof.MethodsA retrospective cohort study was conducted using an established data linkage between routinely collected clinical data from secondary mental health services in South London, UK, and national HIV surveillance data from the UK Health Security Agency. Individuals with an HIV diagnosis prior to their last mental health service contact were included. Documented HIV diagnosis in mental health records was assessed.ResultsAmong the 4,032 individuals identified as living with HIV, 1,281 (31.8%) did not have their diagnosis recorded in their mental health records. Factors associated with the absence of an HIV diagnosis included being of Asian ethnicity, having certain primary mental health diagnoses including schizophrenia, being older, being with a mental health service for longer, having more clinical mental health appointments, and living in a less deprived area.ConclusionsA significant number of individuals living with HIV who are receiving mental healthcare in secondary mental health services did not have their HIV diagnosis documented in their mental health records. Addressing this gap could allow mental healthcare providers to support those living with HIV and severe mental illness to manage the complexity of comorbidities and psychosocial impacts of HIV. Mental health services should explore strategies to increase dialogue around HIV in mental health settings.

  6. d

    GIS Data | USA & Canada | Over 40k Demographics Variables To Inform Business...

    • datarade.ai
    .json, .csv
    Updated Aug 13, 2024
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    GapMaps (2024). GIS Data | USA & Canada | Over 40k Demographics Variables To Inform Business Decisions | Consumer Spending Data| Demographic Data [Dataset]. https://datarade.ai/data-products/gapmaps-premium-demographic-data-by-ags-usa-canada-gis-gapmaps
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    .json, .csvAvailable download formats
    Dataset updated
    Aug 13, 2024
    Dataset authored and provided by
    GapMaps
    Area covered
    Canada, United States
    Description

    GapMaps GIS data for USA and Canada sourced from Applied Geographic Solutions (AGS) includes an extensive range of the highest quality demographic and lifestyle segmentation products. All databases are derived from superior source data and the most sophisticated, refined, and proven methodologies.

    GIS Data attributes include:

    1. Latest Estimates and Projections The estimates and projections database includes a wide range of core demographic data variables for the current year and 5- year projections, covering five broad topic areas: population, households, income, labor force, and dwellings.

    2. Crime Risk Crime Risk is the result of an extensive analysis of a rolling seven years of FBI crime statistics. Based on detailed modeling of the relationships between crime and demographics, Crime Risk provides an accurate view of the relative risk of specific crime types (personal, property and total) at the block and block group level.

    3. Panorama Segmentation AGS has created a segmentation system for the United States called Panorama. Panorama has been coded with the MRI Survey data to bring you Consumer Behavior profiles associated with this segmentation system.

    4. Business Counts Business Counts is a geographic summary database of business establishments, employment, occupation and retail sales.

    5. Non-Resident Population The AGS non-resident population estimates utilize a wide range of data sources to model the factors which drive tourists to particular locations, and to match that demand with the supply of available accommodations.

    6. Consumer Expenditures AGS provides current year and 5-year projected expenditures for over 390 individual categories that collectively cover almost 95% of household spending.

    7. Retail Potential This tabulation utilizes the Census of Retail Trade tables which cross-tabulate store type by merchandise line.

    8. Environmental Risk The environmental suite of data consists of several separate database components including: -Weather Risks -Seismological Risks -Wildfire Risk -Climate -Air Quality -Elevation and terrain

    Primary Use Cases for GapMaps GIS Data:

    1. Retail (eg. Fast Food/ QSR, Cafe, Fitness, Supermarket/Grocery)
    2. Customer Profiling: get a detailed understanding of the demographic & segmentation profile of your customers, where they work and their spending potential
    3. Analyse your trade areas at a granular census block level using all the key metrics
    4. Site Selection: Identify optimal locations for future expansion and benchmark performance across existing locations.
    5. Target Marketing: Develop effective marketing strategies to acquire more customers.
    6. Integrate AGS demographic data with your existing GIS or BI platform to generate powerful visualizations.

    7. Finance / Insurance (eg. Hedge Funds, Investment Advisors, Investment Research, REITs, Private Equity, VC)

    8. Network Planning

    9. Customer (Risk) Profiling for insurance/loan approvals

    10. Target Marketing

    11. Competitive Analysis

    12. Market Optimization

    13. Commercial Real-Estate (Brokers, Developers, Investors, Single & Multi-tenant O/O)

    14. Tenant Recruitment

    15. Target Marketing

    16. Market Potential / Gap Analysis

    17. Marketing / Advertising (Billboards/OOH, Marketing Agencies, Indoor Screens)

    18. Customer Profiling

    19. Target Marketing

    20. Market Share Analysis

  7. Data Sheet 1_Socio-demographic factors related to children’s knowledge about...

    • frontiersin.figshare.com
    • datasetcatalog.nlm.nih.gov
    pdf
    Updated Dec 11, 2024
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    Herion Muja; Suela Vasil; Andis Qendro; Timo Clemens; Dorina Toçi; Ervin Toçi; Helmut Brand; Genc Burazeri (2024). Data Sheet 1_Socio-demographic factors related to children’s knowledge about their rights to healthcare services in transitional Albania.pdf [Dataset]. http://doi.org/10.3389/fpubh.2024.1391265.s001
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    pdfAvailable download formats
    Dataset updated
    Dec 11, 2024
    Dataset provided by
    Frontiers Mediahttp://www.frontiersin.org/
    Authors
    Herion Muja; Suela Vasil; Andis Qendro; Timo Clemens; Dorina Toçi; Ervin Toçi; Helmut Brand; Genc Burazeri
    License

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

    Area covered
    Albania
    Description

    BackgroundOur aim was to assess the level and socio-demographic correlates of knowledge about rights to healthcare services among children in post-communist Albania in order to inform targeted interventions and policies to promote equitable healthcare access for all children.MethodsAn online survey conducted in Albania in September 2022 included a nationwide representative sample of 7,831 schoolchildren (≈54% girls) aged 12–15 years. A structured and anonymous questionnaire was administered inquiring about children’s knowledge on their rights to healthcare services. Binary logistic regression was used to assess the association of children’s knowledge about their rights to healthcare services with socio-demographic characteristics.ResultsOverall, about 78% of the children had knowledge about their rights to healthcare services. In multivariable adjusted logistic regression models, independent “predictors” of lack of knowledge about rights to healthcare services included male gender (OR = 1.2, 95% CI = 1.1–1.3), younger age (OR = 1.3, 95% CI = 1.1–1.4), pertinence to Roma/Egyptian community (OR = 1.6, 95% CI = 1.1–2.2), and a poor/very poor economic situation (OR = 1.3, 95% CI = 1.0–1.6).ConclusionOur findings indicate a significantly lower level of knowledge about rights to healthcare services among children from low socioeconomic families and especially those pertinent to ethnic minorities such as Roma/Egyptian communities, which can result in limited access to essential health services, increased vulnerability to health disparities, and barriers to receiving appropriate care and advocacy for their health and well-being. Seemingly, gender, ethnicity, and economic status are crucial for children’s knowledge of their healthcare rights because these factors shape their access to information, influence their experiences with healthcare systems, and can drive policy and practice to address disparities and ensure equitable access to health services. Health professionals and policymakers in Albania and elsewhere should be aware of the unmet needs for healthcare services due to lack of awareness to navigate the system particularly among disadvantaged population groups.

  8. Geolocet | Demographic Data | Europe | Population, Age, Gender, Marital...

    • datarade.ai
    Updated Nov 3, 2023
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    Geolocet (2023). Geolocet | Demographic Data | Europe | Population, Age, Gender, Marital Status and more | GDPR Compliant | Fully customizable format [Dataset]. https://datarade.ai/data-products/geolocet-demographic-data-europe-population-age-gende-geolocet
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    .json, .xml, .csv, .xls, .sql, .txtAvailable download formats
    Dataset updated
    Nov 3, 2023
    Dataset provided by
    Authors
    Geolocet
    Area covered
    United Kingdom, Montenegro, Finland, Estonia, Liechtenstein, Austria, Monaco, Belarus, Bosnia and Herzegovina, Slovenia, Europe
    Description

    Geolocet offers a rich repository of European demographic data, providing you with a robust foundation for data-driven decisions. Our datasets encompass a diverse range of attributes, but it's important to note that the attributes available may vary significantly from country to country. This variation reflects the unique demographic reporting standards and data availability in each region.

    Attributes include essential demographic factors such as Age Bands, Gender, and Marital Status, as a minimum. In some countries, we provide cross-referenced attributes, such as Marital Status per Age Band, Marital Status per Gender, or even intricate combinations like Marital Status per Gender and Age. Additionally, for select countries, we offer insights into income, employment status, household composition, housing status, and many more.

    🌐 Trusted Source Data

    Our demographic data is derived exclusively from official census sources, ensuring the highest level of accuracy and reliability. We take pride in using data that is available under open licenses for commercial use. However, it's important to note that our data is not a direct representation of the original census data. Instead, we use this source data to create comprehensive demographic models that are tailored to your needs.

    🔄 Annual Data Updates

    To keep your insights fresh and accurate, our data is updated once per year. We offer annual subscriptions, allowing you to access the latest demographic information and maintain the relevance of your analyses.

    🌍 Geographic Coverage

    While our demographic data spans across the majority of European countries and their administrative divisions' boundaries, it's important to inquire about specific attributes and coverage for each region of interest. We understand that your data needs may vary depending on your target regions, and our team is here to assist you in selecting the most relevant datasets for your objectives.

    Contact us to explore our offerings and learn how our data can elevate your decision-making processes.

    🌐 Enhanced with Spatial Insights: Administrative Boundaries Spatial Data

    Geolocet's demographic data isn't limited to numbers; it's brought to life through seamless integration with our Administrative Boundaries Spatial Data. This integration offers precise boundary mapping, allowing you to visualize demographic distributions, patterns, and densities on a map. This spatial perspective unlocks geo patterns and insights, aiding in strategic decision-making. Whether you're planning localized marketing strategies, optimizing resource allocation, or selecting ideal expansion sites, the geographic context adds depth to your data-driven strategies. Contact us today to explore how this spatial synergy can enhance your decision-making.

    🌍 Enhanced with Robust Aggregated POI Data

    Geolocet doesn't stop at demographics; we enhance your analysis by offering Geolocet's POI Aggregated Data. This data source provides a comprehensive understanding of local areas, enabling you to craft detailed local area profiles. It's not just about numbers; it's about uncovering the essence of each locality.

    🔍 Crafting Local Area Profiles

    When you combine our POI Aggregated Data with our Demographics Data, you have the tools to craft insightful local area profiles. Dive into the specific data points for various sectors, such as the number of hospitals, schools, hotels, restaurants, pubs, casinos, groceries, clothing stores, gas stations, and more within designated areas. This level of granularity allows you to paint a vivid picture of each locality, understanding its unique characteristics and offerings.

    Contact us today to explore how this synergy can elevate your strategic decision-making and enrich your insights into local communities.

    🔍 Customized Data Solutions with DaaS

    Geolocet's Data as a Service (DaaS) offers flexibility tailored to your needs. Our transparent pricing model ensures cost-efficiency, allowing you to pay only for the data you require.

  9. w

    Demographic and Health Survey 2002 - Viet Nam

    • microdata.worldbank.org
    • catalog.ihsn.org
    Updated Oct 26, 2023
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    General Statistical Office (GSO) (2023). Demographic and Health Survey 2002 - Viet Nam [Dataset]. https://microdata.worldbank.org/index.php/catalog/1518
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    Dataset updated
    Oct 26, 2023
    Dataset authored and provided by
    General Statistical Office (GSO)
    Time period covered
    2002
    Area covered
    Vietnam
    Description

    Abstract

    The 2002 Vietnam Demographic and Health Survey (VNDHS 2002) is a nationally representative sample survey of 5,665 ever-married women age 15-49 selected from 205 sample points (clusters) throughout Vietnam. It provides information on levels of fertility, family planning knowledge and use, infant and child mortality, and indicators of maternal and child health. The survey included a Community/ Health Facility Questionnaire that was implemented in each of the sample clusters.

    The survey was designed to measure change in reproductive health indicators over the five years since the VNDHS 1997, especially in the 18 provinces that were targeted in the Population and Family Health Project of the Committee for Population, Family and Children. Consequently, all provinces were separated into “project” and “nonproject” groups to permit separate estimates for each. Data collection for the survey took place from 1 October to 21 December 2002.

    The Vietnam Demographic and Health Survey 2002 (VNDHS 2002) was the third DHS in Vietnam, with prior surveys implemented in 1988 and 1997. The VNDHS 2002 was carried out in the framework of the activities of the Population and Family Health Project of the Committee for Population, Family and Children (previously the National Committee for Population and Family Planning).

    The main objectives of the VNDHS 2002 were to collect up-to-date information on family planning, childhood mortality, and health issues such as breastfeeding practices, pregnancy care, vaccination of children, treatment of common childhood illnesses, and HIV/AIDS, as well as utilization of health and family planning services. The primary objectives of the survey were to estimate changes in family planning use in comparison with the results of the VNDHS 1997, especially on issues in the scope of the project of the Committee for Population, Family and Children.

    VNDHS 2002 data confirm the pattern of rapidly declining fertility that was observed in the VNDHS 1997. It also shows a sharp decline in child mortality, as well as a modest increase in contraceptive use. Differences between project and non-project provinces are generally small.

    Geographic coverage

    The 2002 Vietnam Demographic and Health Survey (VNDHS 2002) is a nationally representative sample survey. The VNDHS 1997 was designed to provide separate estimates for the whole country, urban and rural areas, for 18 project provinces and the remaining nonproject provinces as well. Project provinces refer to 18 focus provinces targeted for the strengthening of their primary health care systems by the Government's Population and Family Health Project to be implemented over a period of seven years, from 1996 to 2002 (At the outset of this project there were 15 focus provinces, which became 18 by the creation of 3 new provinces from the initial set of 15). These provinces were selected according to criteria based on relatively low health and family planning status, no substantial family planning donor presence, and regional spread. These criteria resulted in the selection of the country's poorer provinces. Nine of these provinces have significant proportions of ethnic minorities among their population.

    Analysis unit

    • Household
    • Women age 15-49

    Universe

    The population covered by the 2002 VNDHS is defined as the universe of all women age 15-49 in Vietnam.

    Kind of data

    Sample survey data

    Sampling procedure

    The sample for the VNDHS 2002 was based on that used in the VNDHS 1997, which in turn was a subsample of the 1996 Multi-Round Demographic Survey (MRS), a semi-annual survey of about 243,000 households undertaken regularly by GSO. The MRS sample consisted of 1,590 sample areas known as enumeration areas (EAs) spread throughout the 53 provinces/cities of Vietnam, with 30 EAs in each province. On average, an EA comprises about 150 households. For the VNDHS 1997, a subsample of 205 EAs was selected, with 26 households in each urban EA and 39 households for each rural EA. A total of 7,150 households was selected for the survey. The VNDHS 1997 was designed to provide separate estimates for the whole country, urban and rural areas, for 18 project provinces and the remaining nonproject provinces as well. Because the main objective of the VNDHS 2002 was to measure change in reproductive health indicators over the five years since the VNDHS 1997, the sample design for the VNDHS 2002 was as similar as possible to that of the VNDHS 1997.

    Although it would have been ideal to have returned to the same households or at least the same sample points as were selected for the VNDHS 1997, several factors made this undesirable. Revisiting the same households would have held the sample artificially rigid over time and would not allow for newly formed households. This would have conflicted with the other major survey objective, which was to provide up-to-date, representative data for the whole of Vietnam. Revisiting the same sample points that were covered in 1997 was complicated by the fact that the country had conducted a population census in 1999, which allowed for a more representative sample frame.

    In order to balance the two main objectives of measuring change and providing representative data, it was decided to select enumeration areas from the 1999 Population Census, but to cover the same communes that were sampled in the VNDHS 1997 and attempt to obtain a sample point as close as possible to that selected in 1997. Consequently, the VNDHS 2002 sample also consisted of 205 sample points and reflects the oversampling in the 20 provinces that fall in the World Bank-supported Population and Family Health Project. The sample was designed to produce about 7,000 completed household interviews and 5,600 completed interviews with ever-married women age 15-49.

    Mode of data collection

    Face-to-face

    Research instrument

    As in the VNDHS 1997, three types of questionnaires were used in the 2002 survey: the Household Questionnaire, the Individual Woman's Questionnaire, and the Community/Health Facility Questionnaire. The first two questionnaires were based on the DHS Model A Questionnaire, with additions and modifications made during an ORC Macro staff visit in July 2002. The questionnaires were pretested in two clusters in Hanoi (one in a rural area and another in an urban area). After the pretest and consultation with ORC Macro, the drafts were revised for use in the main survey.

    a) The Household Questionnaire was used to enumerate all usual members and visitors in selected households and to collect information on age, sex, education, marital status, and relationship to the head of household. The main purpose of the Household Questionnaire was to identify persons who were eligible for individual interview (i.e. ever-married women age 15-49). In addition, the Household Questionnaire collected information on characteristics of the household such as water source, type of toilet facilities, material used for the floor and roof, and ownership of various durable goods.

    b) The Individual Questionnaire was used to collect information on ever-married women aged 15-49 in surveyed households. These women were interviewed on the following topics:
    - Respondent's background characteristics (education, residential history, etc.); - Reproductive history; - Contraceptive knowledge and use;
    - Antenatal and delivery care; - Infant feeding practices; - Child immunization; - Fertility preferences and attitudes about family planning; - Husband's background characteristics; - Women's work information; and - Knowledge of AIDS.

    c) The Community/Health Facility Questionnaire was used to collect information on all communes in which the interviewed women lived and on services offered at the nearest health stations. The Community/Health Facility Questionnaire consisted of four sections. The first two sections collected information from community informants on some characteristics such as the major economic activities of residents, distance from people's residence to civic services and the location of the nearest sources of health care. The last two sections involved visiting the nearest commune health centers and intercommune health centers, if these centers were located within 30 kilometers from the surveyed cluster. For each visited health center, information was collected on the type of health services offered and the number of days services were offered per week; the number of assigned staff and their training; medical equipment and medicines available at the time of the visit.

    Cleaning operations

    The first stage of data editing was implemented by the field editors soon after each interview. Field editors and team leaders checked the completeness and consistency of all items in the questionnaires. The completed questionnaires were sent to the GSO headquarters in Hanoi by post for data processing. The editing staff of the GSO first checked the questionnaires for completeness. The data were then entered into microcomputers and edited using a software program specially developed for the DHS program, the Census and Survey Processing System, or CSPro. Data were verified on a 100 percent basis, i.e., the data were entered separately twice and the two results were compared and corrected. The data processing and editing staff of the GSO were trained and supervised for two weeks by a data processing specialist from ORC Macro. Office editing and processing activities were initiated immediately after the beginning of the fieldwork and were completed in late December 2002.

    Response rate

    The results of the household and individual

  10. f

    Socio-demographic sample characteristics, sedentary behaviours and...

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated Oct 15, 2016
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    De Bourdeaudhuij, Ilse; Roda, Célina; Mackenbach, Joreintje D.; Lakerveld, Jeroen; De Cocker, Katrien; Bardos, Helga; Rutter, Harry; Cardon, Greet; Glonti, Ketevan; Compernolle, Sofie; Oppert, Jean-Michel (2016). Socio-demographic sample characteristics, sedentary behaviours and objectively measured/perceived physical environmental neighbourhood factors. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001548520
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    Dataset updated
    Oct 15, 2016
    Authors
    De Bourdeaudhuij, Ilse; Roda, Célina; Mackenbach, Joreintje D.; Lakerveld, Jeroen; De Cocker, Katrien; Bardos, Helga; Rutter, Harry; Cardon, Greet; Glonti, Ketevan; Compernolle, Sofie; Oppert, Jean-Michel
    Description

    Socio-demographic sample characteristics, sedentary behaviours and objectively measured/perceived physical environmental neighbourhood factors.

  11. f

    Socio-demographic variables and saying positive about destiny.

    • figshare.com
    • plos.figshare.com
    xls
    Updated Jun 21, 2023
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    Tahani Hassan; Mauricio Carvache-Franco; Orly Carvache-Franco; Wilmer Carvache-Franco (2023). Socio-demographic variables and saying positive about destiny. [Dataset]. http://doi.org/10.1371/journal.pone.0283720.t006
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    xlsAvailable download formats
    Dataset updated
    Jun 21, 2023
    Dataset provided by
    PLOS ONE
    Authors
    Tahani Hassan; Mauricio Carvache-Franco; Orly Carvache-Franco; Wilmer Carvache-Franco
    License

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

    Description

    Socio-demographic variables and saying positive about destiny.

  12. f

    Socio-demographic factors of the sample in China university students...

    • plos.figshare.com
    xls
    Updated Jun 1, 2023
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    Lu Chen; Lin Wang; Xiao Hui Qiu; Xiu Xian Yang; Zheng Xue Qiao; Yan Jie Yang; Yuan Liang (2023). Socio-demographic factors of the sample in China university students (n = 5245). [Dataset]. http://doi.org/10.1371/journal.pone.0058379.t001
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    xlsAvailable download formats
    Dataset updated
    Jun 1, 2023
    Dataset provided by
    PLOS ONE
    Authors
    Lu Chen; Lin Wang; Xiao Hui Qiu; Xiu Xian Yang; Zheng Xue Qiao; Yan Jie Yang; Yuan Liang
    License

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

    Area covered
    China
    Description

    Socio-demographic factors of the sample in China university students (n = 5245).

  13. Survey Data of the socio-demographic, economic and water source types that...

    • zenodo.org
    • datadryad.org
    bin, csv
    Updated Jun 4, 2022
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    Shewayiref Geremew Gebremichael; Shewayiref Geremew Gebremichael (2022). Survey Data of the socio-demographic, economic and water source types that influences HHs drinking water supply [Dataset]. http://doi.org/10.5061/dryad.mw6m905w8
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    bin, csvAvailable download formats
    Dataset updated
    Jun 4, 2022
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    Shewayiref Geremew Gebremichael; Shewayiref Geremew Gebremichael
    License

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

    Description

    Background: Clean water is an essential part of human healthy life and wellbeing. More recently, rapid population growth, high illiteracy rate, lack of sustainable development, and climate change; faces a global challenge in developing countries. The discontinuity of drinking water supply forces households either to use unsafe water storage materials or to use water from unsafe sources. The present study aimed to identify the determinants of water source types, use, quality of water, and sanitation perception of physical parameters among urban households in North-West Ethiopia.

    Methods: A community-based cross-sectional study was conducted among households from February to March 2019. An interview-based a pretested and structured questionnaire was used to collect the data. Data collection samples were selected randomly and proportional to each of the kebeles' households. MS Excel and R Version 3.6.2 were used to enter and analyze the data; respectively. Descriptive statistics using frequencies and percentages were used to explain the sample data concerning the predictor variable. Both bivariate and multivariate logistic regressions were used to assess the association between independent and response variables.

    Results: Four hundred eighteen (418) households have participated. Based on the study undertaken,78.95% of households used improved and 21.05% of households used unimproved drinking water sources. Households drinking water sources were significantly associated with the age of the participant (x2 = 20.392, df=3), educational status(x2 = 19.358, df=4), source of income (x2 = 21.777, df=3), monthly income (x2 = 13.322, df=3), availability of additional facilities (x2 = 98.144, df=7), cleanness status (x2 =42.979, df=4), scarcity of water (x2 = 5.1388, df=1) and family size (x2 = 9.934, df=2). The logistic regression analysis also indicated that those factors are significantly determining the water source types used by the households. Factors such as availability of toilet facility, household member type, and sex of the head of the household were not significantly associated with drinking water sources.

    Conclusion: The uses of drinking water from improved sources were determined by different demographic, socio-economic, sanitation, and hygiene-related factors. Therefore, ; the local, regional, and national governments and other supporting organizations shall improve the accessibility and adequacy of drinking water from improved sources in the area.

  14. w

    Demographic and Health Survey 2015-2016 - Armenia

    • microdata.worldbank.org
    • microdata.armstat.am
    • +2more
    Updated Jan 9, 2019
    + more versions
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    Ministry of Health (MOH) (2019). Demographic and Health Survey 2015-2016 - Armenia [Dataset]. https://microdata.worldbank.org/index.php/catalog/2893
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    Dataset updated
    Jan 9, 2019
    Dataset provided by
    National Statistical Service (NSSS)
    Ministry of Health (MOH)
    Time period covered
    2015 - 2016
    Area covered
    Armenia
    Description

    Abstract

    The 2015-16 Armenia Demographic and Health Survey (2015-16 ADHS) is the fourth in a series of nationally representative sample surveys designed to provide information on population and health issues. It is conducted in Armenia under the worldwide Demographic and Health Surveys program. Specifically, the objective of the 2015-16 ADHS is to provide current and reliable information on fertility and abortion levels, marriage, sexual activity, fertility preferences, awareness and use of family planning methods, breastfeeding practices, nutritional status of young children, childhood mortality, maternal and child health, domestic violence against women, child discipline, awareness and behavior regarding AIDS and other sexually transmitted infections (STIs), and other health-related issues such as smoking, tuberculosis, and anemia. The survey obtained detailed information on these issues from women of reproductive age and, for certain topics, from men as well.

    The 2015-16 ADHS results are intended to provide information needed to evaluate existing social programs and to design new strategies to improve the health of and health services for the people of Armenia. Data are presented by region (marz) wherever sample size permits. The information collected in the 2015-16 ADHS will provide updated estimates of basic demographic and health indicators covered in the 2000, 2005, and 2010 surveys.

    The long-term objective of the survey includes strengthening the technical capacity of major government institutions, including the NSS. The 2015-16 ADHS also provides comparable data for longterm trend analysis because the 2000, 2005, 2010, and 2015-16 surveys were implemented by the same organization and used similar data collection procedures. It also adds to the international database of demographic and health–related information for research purposes.

    Geographic coverage

    National coverage

    Analysis unit

    • Household
    • Individual
    • Children age 0-5
    • Woman age 15-49
    • Man age 15-49

    Universe

    The survey covered all de jure household members (usual residents), children age 0-4 years, women age 15-49 years and men age 15-49 years resident in the household.

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    The sample was designed to produce representative estimates of key indicators at the national level, for Yerevan, and for total urban and total rural areas separately. Many indicators can also be estimated at the regional (marz) level.

    The sampling frame used for the 2015-16 ADHS is the Armenia Population and Housing Census, which was conducted in Armenia in 2011 (APHC 2011). The sampling frame is a complete list of enumeration areas (EAs) covering the whole country, a total number of 11,571 EAs, provided by the National Statistical Service (NSS) of Armenia, the implementing agency for the 2015-16 ADHS. This EA frame was created from the census data base by summarizing the households down to EA level. A representative probability sample of 8,749 households was selected for the 2015-16 ADHS sample. The sample was selected in two stages. In the first stage, 313 clusters (192 in urban areas and 121 in rural areas) were selected from a list of EAs in the sampling frame. In the second stage, a complete listing of households was carried out in each selected cluster. Households were then systematically selected for participation in the survey. Appendix A provides additional information on the sample design of the 2015-16 Armenia DHS. Because of the approximately equal sample size in each marz, the sample is not self-weighting at the national level, and weighting factors have been calculated, added to the data file, and applied so that results are representative at the national level.

    For further details on sample design, see Appendix A of the final report.

    Mode of data collection

    Face-to-face [f2f]

    Research instrument

    Five questionnaires were used for the 2015-16 ADHS: the Household Questionnaire, the Woman’s Questionnaire, the Man’s Questionnaire, the Biomarker Questionnaire, and the Fieldworker Questionnaire. These questionnaires, based on The DHS Program’s standard Demographic and Health Survey questionnaires, were adapted to reflect the population and health issues relevant to Armenia. Input was solicited from various stakeholders representing government ministries and agencies, nongovernmental organizations, and international donors. After all questionnaires were finalized in English, they were translated into Armenian. They were pretested in September-October 2015.

    Cleaning operations

    The processing of the 2015-16 ADHS data began shortly after fieldwork commenced. All completed questionnaires were edited immediately by field editors while still in the field and checked by the supervisors before being dispatched to the data processing center at the NSS central office in Yerevan. These completed questionnaires were edited and entered by 15 data processing personnel specially trained for this task. All data were entered twice for 100 percent verification. Data were entered using the CSPro computer package. The concurrent processing of the data was an advantage because the senior ADHS technical staff were able to advise field teams of problems detected during the data entry. In particular, tables were generated to check various data quality parameters. Moreover, the double entry of data enabled easy comparison and identification of errors and inconsistencies. As a result, specific feedback was given to the teams to improve performance. The data entry and editing phase of the survey was completed in June 2016.

    Response rate

    A total of 8,749 households were selected in the sample, of which 8,205 were occupied at the time of the fieldwork. The main reason for the difference is that some of the dwelling units that were occupied during the household listing operation were either vacant or the household was away for an extended period at the time of interviewing. The number of occupied households successfully interviewed was 7,893, yielding a household response rate of 96 percent. The household response rate in urban areas (96 percent) was nearly the same as in rural areas (97 percent).

    In these households, a total of 6,251 eligible women were identified; interviews were completed with 6,116 of these women, yielding a response rate of 98 percent. In one-half of the households, a total of 2,856 eligible men were identified, and interviews were completed with 2,755 of these men, yielding a response rate of 97 percent. Among men, response rates are slightly lower in urban areas (96 percent) than in rural areas (97 percent), whereas rates for women are the same in urban and in rural areas (98 percent).

    The 2015-16 ADHS achieved a slightly higher response rate for households than the 2010 ADHS (NSS 2012). The increase is only notable for urban households (96 percent in 2015-16 compared with 94 percent in 2010). Response rates in all other categories are very close to what they were in 2010.

    Sampling error estimates

    SAS computer software were used to calculate sampling errors for the 2015-16 ADHS. The programs used the Taylor linearization method of variance estimation for means or proportions and the Jackknife repeated replication method for variance estimation of more complex statistics such as fertility and mortality rates.

    A more detailed description of estimates of sampling errors are presented in Appendix B of the survey final report.

    Data appraisal

    Data Quality Tables - Household age distribution - Age distribution of eligible and interviewed women - Age distribution of eligible and interviewed men - Completeness of reporting - Births by calendar years - Reporting of age at death in days - Reporting of age at death in months - Nutritional status of children based on the NCHS/CDC/WHO International Reference Population - Vaccinations by background characteristics for children age 18-29 months

    See details of the data quality tables in Appendix C of the survey final report.

  15. f

    Baseline demographic characteristics and risk factors of total complete case...

    • datasetcatalog.nlm.nih.gov
    Updated Oct 11, 2023
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    Marston, Louise; Lewis, Gemma; Mathur, Rohini; Lowther, Ed; Mukadam, Naaheed; Rait, Greta; Livingston, Gill (2023). Baseline demographic characteristics and risk factors of total complete case sample and divided into Black, South Asian and White ethnicity. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001092869
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    Dataset updated
    Oct 11, 2023
    Authors
    Marston, Louise; Lewis, Gemma; Mathur, Rohini; Lowther, Ed; Mukadam, Naaheed; Rait, Greta; Livingston, Gill
    Area covered
    South Asia
    Description

    Baseline demographic characteristics and risk factors of total complete case sample and divided into Black, South Asian and White ethnicity.

  16. f

    Demographic characteristics of the study samples.

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated Dec 19, 2024
    + more versions
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    Wu, Rachel; Sheffler, Pamela; Strickland-Hughes, Carla M.; Kyeong, Yena; Ferguson, Leah; Kürüm, Esra; Davis, Elizabeth L. (2024). Demographic characteristics of the study samples. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001434407
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    Dataset updated
    Dec 19, 2024
    Authors
    Wu, Rachel; Sheffler, Pamela; Strickland-Hughes, Carla M.; Kyeong, Yena; Ferguson, Leah; Kürüm, Esra; Davis, Elizabeth L.
    Description

    Growth mindset, the belief that abilities and attributes are changeable, has been implicated in better mental health and health behaviors and may be especially critical during challenging life events. One goal of this prospective longitudinal study was to investigate the role of growth mindset in adults’ mental health (i.e., depression, well-being, and adjustment of daily routines) over two years of the COVID-19 pandemic. We also examined this relationship in older adults who had participated in a prior learning intervention including growth mindset training (compared with those who had not). Adults ages 19 to 89 from ethnically diverse backgrounds in Southern California (n = 454) were surveyed at three timepoints between June 2020 and September 2022. In Study 1 focusing on this wide age range (n = 393), we found that growth mindset was associated with lower levels of depression and higher levels of well-being and adjustment, after accounting for various sociodemographic factors. Study 2, which focused on older adults (n = 174), largely replicated the findings from Study 1. Furthermore, the conducive effect of growth mindset on well-being was marginally greater among those who had participated in the intervention, and those who had participated in the intervention showed an increase in well-being over time, while well-being scores decreased in the control group. Together, our findings suggest that growth mindset may be an important protective factor for mental health during challenging times.

  17. u

    Data from: Latent Profiles of Learning Style Preferences According to...

    • investigacion.unir.net
    • observatorio-cientifico.ua.es
    • +1more
    Updated 2025
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    Soler, Seila; Diago-Egaña, MaríaLuz; Rosser, Pablo; Soler, Seila; Diago-Egaña, MaríaLuz; Rosser, Pablo (2025). Latent Profiles of Learning Style Preferences According to Educational Modality and Demographic Factors in Higher Education [Dataset]. https://investigacion.unir.net/documentos/6856992c6364e456d3a66d55
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    Dataset updated
    2025
    Authors
    Soler, Seila; Diago-Egaña, MaríaLuz; Rosser, Pablo; Soler, Seila; Diago-Egaña, MaríaLuz; Rosser, Pablo
    Description

    This study aimed to: (a) analyze university students' learning style preferences based on sociodemographic variables (sex, age, and educational modality), and (b) identify latent profiles of learning styles.The Index of Learning Styles (ILS), adapted to Spanish, was administered to a sample of university students enrolled in both face-to-face and synchronous online programs. Four main hypotheses were formulated, including the influence of sociodemographic variables on learning styles and the possibility of identifying latent profiles using Latent Profile Analysis (LPA) and classification techniques (CART).

    The results show that students preferred the Sensing, Visual, and Sequential learning styles. Educational modality did not present significant differences in learning style preferences, although variations were observed in the Processing dimension, with a higher preference for the Active style among face-to-face students. Sex and age influenced only the Understanding dimension.

    Six well-defined latent profiles were identified; however, these profiles were not significantly associated with sociodemographic variables. The CART classification model showed poor performance, highlighting the limited predictive power of these variables.

    The main conclusion is that learning style preferences reflect individual cognitive patterns rather than external sociodemographic characteristics. The latent profiles offer a more personalized and effective pedagogical approach, contributing to improved equity and quality in higher education. This study underscores the importance of incorporating motivational and metacognitive variables in future research and educational interventions.

  18. Wiki-based Knowledge about Demographics and Outstanding Members

    • zenodo.org
    • data.niaid.nih.gov
    bin
    Updated Jan 14, 2023
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    Hiba Arnaout; Simon Razniewski; Gerhard Weikum; Jeff Z. Pan; Hiba Arnaout; Simon Razniewski; Gerhard Weikum; Jeff Z. Pan (2023). Wiki-based Knowledge about Demographics and Outstanding Members [Dataset]. http://doi.org/10.5281/zenodo.7468317
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    binAvailable download formats
    Dataset updated
    Jan 14, 2023
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    Hiba Arnaout; Simon Razniewski; Gerhard Weikum; Jeff Z. Pan; Hiba Arnaout; Simon Razniewski; Gerhard Weikum; Jeff Z. Pan
    License

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

    Description

    These datasets contains statements about demographic factors and outstanding members from Wiki-based knowledge (i.e., Wikipedia and Wikidata).

    Group-centric dataset (sample of what is it about):

    • Demographic factors of winners of Nobel Prize in Physics include: male, physicist, american, university teacher, and researcher. Outstanding members in this group include Maria Curie (who isn't male but female) and Wilhelm Röntgen (who isn't a citizen of the U.S. but Germany).

    Subject-centric dataset (sample of what is it about):

    • Fun trivia about Max Planck include: unlike 93% of winners of Liebig Medal (an award by Society of German Chemists), Planck was not a chemist, but a physicist.

    This data can be also browsed at: https://wikiknowledge.onrender.com/demographics/

  19. w

    Demographic and Health Survey 2004 - Lesotho

    • microdata.worldbank.org
    • catalog.ihsn.org
    • +1more
    Updated Jun 6, 2017
    + more versions
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    Ministry of Health and Social Welfare (2017). Demographic and Health Survey 2004 - Lesotho [Dataset]. https://microdata.worldbank.org/index.php/catalog/1426
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    Dataset updated
    Jun 6, 2017
    Dataset provided by
    Ministry of Health and Social Welfare
    Bureau of Statistics
    Time period covered
    2004 - 2005
    Area covered
    Lesotho
    Description

    Abstract

    The Ministry of Health and Social Welfare (MOHSW) initiated the 2004 Lesotho Demographic and Health Survey (LDHS) to collect population-based data to inform the Health Sector Reform Programme (2000-2009). The 2004 LDHS will assist in monitoring and evaluating the performance of the Health Sector Reform Programme since 2000 by providing data to be compared with data from the first baseline survey, which was conducted when the reform programme began. The LDHS survey will also provide crucial information to help define the targets for Phase II of the Health Sector Reform Programme (2005-2008). Additionally, the 2004 LDHS results will serve as the main source of key demographic indicators in Lesotho until the 2006 population census results are available.

    The LDHS was conducted using a representative sample of women and men of reproductive age.

    The specific objectives were to: - Provide data at national and district levels that allow the determination of demographic indicators, particularly fertility and childhood mortality rates; - Measure changes in fertility and contraceptive use and at the same time analyse the factors that affect these changes, such as marriage patterns, desire for children, availability of contraception, breastfeeding patterns, and important social and economic factors; - Examine the basic indicators of maternal and child health in Lesotho, including nutritional status, use of antenatal and maternity services, treatment of recent episodes of childhood illness, and immunisation coverage for children; - Describe the patterns of knowledge and behaviour related to the transmission of HIV/AIDS, other sexually transmitted infections, and tuberculosis; - Estimate adult and maternal mortality ratios at the national level; - Estimate the prevalence of anaemia among children, women and men, and the prevalence of HIV among women and men at the national and district levels.

    Geographic coverage

    National

    Analysis unit

    • Households
    • Individuals
    • Women age 15-49
    • Men age 15-59

    Kind of data

    Sample survey data

    Sampling procedure

    The sample for the 2004 LDHS covered the household population. A representative probability sample of more than 9,000 households was selected for the 2004 LDHS sample. This sample was constructed to allow for separate estimates for key indicators in each of the ten districts in Lesotho, as well as for urban and rural areas separately.

    The survey utilized a two-stage sample design. In the first stage, 405 clusters (109 in the urban and 296 in the rural areas) were selected from a list of enumeration areas from the 1996 Population Census frame. In the second stage, a complete listing of households was carried out in each selected cluster. Households were then systematically selected for participation in the survey.

    All women age 15-49 who were either permanent household residents in the 2004 LDHS sample or visitors present in the household on the night before the survey were eligible to be interviewed. In addition, in every second household selected for the survey, all men age 15-59 years were eligible to be interviewed if they were either permanent residents or visitors present in the household on the night before the survey. In the households selected for the men's survey, height and weight measurements were taken for eligible women and children under five years of age. Additionally, eligible women, men, and children under age five were tested in the field for anaemia, and eligible women and men were asked for an additional blood sample for anonymous testing for HIV.

    Note: See detailed sample implementation in the APPENDIX A of the final 2004 Lesotho Demographic and Health Survey Final Report.

    Mode of data collection

    Face-to-face

    Research instrument

    Three questionnaires were used for the 2004 LDHS: the Household Questionnaire, the Women’s Questionnaire, and the Men’s Questionnaire. To reflect relevant issues in population and health in Lesotho, the questionnaires were adapted during a series of technical meetings with various stakeholders from government ministries and agencies, nongovernmental organizations and international donors. The final draft of the questionnaire was discussed at a large meeting of the LDHS Technical Committee organized by the MOHSW and BOS. The adapted questionnaires were translated from English into Sesotho and pretested during June 2004.

    The Household Questionnaire was used to list all of the usual members and visitors in the selected households. The main purpose of the Household Questionnaire was to identify women and men who were eligible for the individual interview. Some basic information was also collected on the characteristics of each person listed, including age, sex, education, residence and emigration status, and relationship to the head of the household. For children under 18, survival status of the parents was determined. The Household Questionnaire also collected information on characteristics of the household’s dwelling unit, such as the source of water, type of toilet facilities, materials used for the floor of the house, ownership of various durable goods, and access to health facilities. For households selected for the male survey subsample, the questionnaire was used to record height, weight, and haemoglobin measurements of women, men and children, and the respondents’ decision about whether to volunteer to give blood samples for HIV.

    The Women’s Questionnaire was used to collect information from all women age 15-49. The women were asked questions on the following topics: - Background characteristics (education, residential history, media exposure, etc.) - Birth history and childhood mortality - Knowledge and use of family planning methods - Fertility preferences - Antenatal and delivery care - Breastfeeding and infant feeding practices - Vaccinations and childhood illnesses - Marriage and sexual activity - Woman’s work and husband’s background characteristics - Awareness and behaviour regarding AIDS, other sexually transmitted infections (STIs), and tuberculosis (TB) - Maternal mortality

    The Men’s Questionnaire was administered to all men age 15-59 living in every other household in the 2004-05 LDHS sample. The Men’s Questionnaire collected much of the same information found in the Women’s Questionnaire, but was shorter because it did not contain a detailed reproductive history or questions on maternal and child health, nutrition, and maternal mortality.

    Geographic coordinates were collected for each EA in the 2004 LDHS.

    Cleaning operations

    The processing of the 2004 LDHS results began shortly after the fieldwork commenced. Completed questionnaires were returned periodically from the field to BOS headquarters, where they were entered and edited by data processing personnel who were specially trained for this task. The data processing personnel included two supervisors, two questionnaire administrators/office editors-who ensured that the expected number of questionnaires from each cluster was received-16 data entry operators, and two secondary editors. The concurrent processing of the data was an advantage because BOS was able to advise field teams of problems detected during the data entry. In particular, tables were generated to check various data quality parameters. As a result, specific feedback was given to the teams to improve performance. The data entry and editing phase of the survey was completed in May 2005.

    Response rate

    Response rates are important because high non-response may affect the reliability of the results. A total of 9,903 households were selected for the sample, of which 9,025 were found to be occupied during data collection. Of the 9,025 existing households, 8,592 were successfully interviewed, yielding a household response rate of 95 percent.

    In these households, 7,522 women were identified as eligible for the individual interview. Interviews were completed with 94 percent of these women. Of the 3,305 eligible men identified, 85 percent were successfully interviewed. The response rate for urban women and men is somewhat higher than for rural respondents (96 percent compared with 94 percent for women and 88 percent compared with 84 percent for men). The principal reason for non-response among eligible women and men was the failure to find individuals at home despite repeated visits to the household. The lower response rate for men reflects the more frequent and longer absences of men from the household, principally because of employment and life style.

    Response rates for the HIV testing component were lower than those for the interviews.

    See summarized response rates in Table 1.2 of the Final Report.

    Sampling error estimates

    The estimates from a sample survey are affected by two types of errors: (1) nonsampling errors, and (2) sampling errors. Nonsampling errors are the results of mistakes made in implementing data collection and data processing, such as failure to locate and interview the correct household, misunderstanding of the questions on the part of either the interviewer or the respondent, and data entry errors. Although numerous efforts were made during the implementation of the 2004 Lesotho Demographic and Health Survey (LSDHS) to minimize this type of error, nonsampling errors are impossible to avoid and difficult to evaluate statistically.

    Sampling errors, on the other hand, can be evaluated statistically. The sample of respondents selected in the 2004 LSDHS is only one of many samples that could have been selected from the same population, using the same design and expected size. Each of these samples would yield

  20. #Coronavirus on TikTok

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    Updated Feb 6, 2023
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    The Devastator (2023). #Coronavirus on TikTok [Dataset]. https://www.kaggle.com/datasets/thedevastator/user-engagement-with-covid-misinformation-on-tik/code
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    zip(3409 bytes)Available download formats
    Dataset updated
    Feb 6, 2023
    Authors
    The Devastator
    License

    https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

    Description

    #Coronavirus on TikTok:

    Examining Factors Related to Reception of Content

    By [source]

    About this dataset

    This dataset explores various factors associated with the reception of COVID-19 related content on TikTok. It not only captures overall levels of user engagement such as likes, comments, and views but also explores source credibility including information from healthcare professionals, news sources, patients, and other outlets. It further dives into demographic factors such as gender and age range as well as content type like humor or provision of clinical instruction. Finally, it takes a look at elements such as description of risk factors & symptoms along with modes of transmission established by the posts in question and prevention that was discussed within them. Moreover, there is a discernment component that breaks down user perception - rating the posts for level of misinformation (moderate/high/low). All these measures combined provide insights into how users are engaging with COVID-19 related misinformation on TikTok

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    How to use the dataset

    This dataset contains user engagement data and measures of source credibility related to COVID-19 misinformation on TikTok. It can be used to examine the factors associated with content reception, such as views, likes, comments, as well as factors relating to credibility, demographics and content type.

    Using this dataset: - Explore the columns available in the dataset. There are a number of columns that measure user engagement (views, likes and comments) as well as source credibility (official source, healthcare professional etc.), demographic factors (gender, age group etc.), and content type (humor etc). Get familiar with all these columns so that you know what information is available for analysis.
    - Decide what kind of analysis you want to perform. You can use this data for exploratory or explanatory work - depending on your aims or research question. For example if you want to see how source credibility affects user engagement then you would need descriptive statistical techniques such as correlation tests or regression analyses etc., whereas if you just want to gain an overall understanding of patterns in this data then exploratory techniques such as cross tabulations may be more suitable.

    Research Ideas

    • Developing a predictive model to identify which demographic and source characteristics are correlated with high user engagement for COVID-related posts on TikTok (e.g. views, likes, and comments).
    • Investigating the difference in user engagement for posts from healthcare professionals vs non-professional sources to compare how different types of content are received by users on TikTok.
    • Analyzing the sentiment of words related to masks and tests in order to gain insights into how content about this topic is perceived by users on TikTok (i.e., positive or negative sentiment)

    Acknowledgements

    If you use this dataset in your research, please credit the original authors. Data Source

    License

    License: CC0 1.0 Universal (CC0 1.0) - Public Domain Dedication No Copyright - You can copy, modify, distribute and perform the work, even for commercial purposes, all without asking permission. See Other Information.

    Columns

    File: tiktok_data_open.csv | Column name | Description | |:-------------------------------|:------------------------------------------------------------------------| | views | Number of views for the video. (Integer) | | likes | Number of likes for the video. (Integer) | | comments | Number of comments for the video. (Integer) | | official_source | Whether the source of the video is an official source. (Boolean) | | pub_hcp | Whether the source of the video is a healthcare professional. (Boolean) | | pub_news | Whether the source of the video is a news source. (Boolean) | | pub_patient | Whether the source of the video is a patient. (Boolean) | | pub_other | Whether the source of the video is another source. (Boolean) | | female ...

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Amy Brown; Michelle Lee (2023). Sample distribution by Demographic Factors (N = 384). [Dataset]. http://doi.org/10.1371/journal.pone.0054229.t002
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Sample distribution by Demographic Factors (N = 384).

Related Article
Explore at:
xlsAvailable download formats
Dataset updated
Jun 1, 2023
Dataset provided by
PLOShttp://plos.org/
Authors
Amy Brown; Michelle Lee
License

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

Description

Sample distribution by Demographic Factors (N = 384).

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