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Granite State Poll is a quarterly poll conducted by the University of New Hampshire Survey Center. The poll sample consists of about 500 New Hampshire adults with a working telephone across the state. Each poll contains a series of basic demographic questions that are repeated in future polls, as well as a set of unique questions that are submitted by clients. This poll includes four questions related to preferences about dams. These questions were designed by Natallia Leuchanka Diessner, Catherine M. Ashcraft, Kevin H. Gardner, and Lawrence C. Hamilton as part of the "Future of Dams" project.This Technical Report was written by the UNH Survey Center and describes the protocols and standards of the Granite State Poll #68 (Client Poll), which includes questions related to preferences about dams, designed by Natallia Leuchanka Diessner, Catherine M. Ashcraft, Kevin H. Gardner, and Lawrence C. Hamilton as part of the "Future of Dams" project.The first file is a screenshot of the Technical Report to provide a preview for Figshare. The second file is the Technical Report in Microsoft Word format.
Airborne geophysical surveys were conducted in the eastern Adirondacks from Dec. 7, 2015 - Dec. 21, 2015, by Goldak Airborne Surveys. The area was flown along a draped surface with a nominal survey height above ground of 125 meters. The flight line spacing was 250 meters for traverse lines and 2500 meters for control lines. Here we present downloadable magnetic and radiometric (gamma spectrometry) data from those surveys as image (Geotiff) and flight line data (csv format). The Eastern Adirondacks region was known for iron mining in the 1800's and 1900's but it also contains deposits of rare earth minerals. Rare earth minerals are used in advanced technology such as in cell phones, rechargeable batteries and super-magnets. In many areas rare earth minerals appear to be associated with iron ore. The surveys were flown in order to map geologic variations in three dimensions. Magnetic surveys measure subtle changes in Earth's magnetic field that reflect different types of buried rock, such as iron-rich ore bodies. Radiometric methods detect naturally occurring gamma particles. The energy spectra of these particles can be used to estimate relative amounts of potassium, uranium and thorium (also referred to as gamma ray spectrometry), which are sometimes associated with rare earth elements. Together, these data provide insights into the regional tectonic and magmatic history as well as mineral resources in the area.
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.
New reweighting policy
Following the new reweighting policy ONS has reviewed the latest population estimates made available during 2019 and have decided not to carry out a 2019 LFS and APS reweighting exercise. Therefore, the next reweighting exercise will take place in 2020. These will incorporate the 2019 Sub-National Population Projection data (published in May 2020) and 2019 Mid-Year Estimates (published in June 2020). It is expected that reweighted Labour Market aggregates and microdata will be published towards the end of 2020/early 2021.
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.
Additional data derived from the QLFS
The Archive also holds further QLFS series: End User Licence (EUL) quarterly data; Secure Access datasets; household datasets; quarterly, annual and ad hoc module datasets compiled for Eurostat; and some additional annual Northern Ireland datasets.
Variables DISEA and LNGLST
Dataset A08 (Labour market status of disabled people) which ONS suspended due to an apparent discontinuity between April to June 2017 and July to September 2017 is now available. As a result of this apparent discontinuity and the inconclusive investigations at this stage, comparisons should be made with caution between April to June 2017 and subsequent time periods. However users should note that the estimates are not seasonally adjusted, so some of the change between quarters could be due to seasonality. Further recommendations on historical comparisons of the estimates will be given in November 2018 when ONS are due to publish estimates for July to September 2018.
An article explaining the quality assurance investigations that have been conducted so far is available on the ONS Methodology webpage. For any queries about Dataset A08 please email Labour.Market@ons.gov.uk.
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: https://www.ons.gov.uk/employmentandlabourmarket/peopleinwork/employmentandemployeetypes/articles/revisionofmiscodedoccupationaldataintheonslabourforcesurveyuk/january2021toseptember2022" style="background-color: rgb(255, 255, 255);">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 second edition (February 2025), the data file was resupplied with the 2024 weighting variable included (LGWT24).
Aeromagnetic data were collected along flight lines by instruments in an aircraft that recorded magnetic-field values and locations. This dataset presents latitude, longitude, altitude, and magnetic-field values.
The World Bank Enterprise Survey (WBES) is a firm-level survey of a representative sample of an economy's private sector. The surveys cover a broad range of topics related to the business environment including access to finance, corruption, infrastructure, competition, and performance.
National coverage
The primary sampling unit of the study is the establishment. An establishment is a physical location where business is carried out and where industrial operations take place or services are provided. A firm may be composed of one or more establishments. For example, a brewery may have several bottling plants and several establishments for distribution. For the purposes of this survey an establishment must make its own financial decisions and have its own financial statements separate from those of the firm. An establishment must also have its own management and control over its payroll.
The universe of inference includes all formal (i.e., registered) private sector businesses (with at least 1% private ownership) and with at least five employees. In terms of sectoral criteria, all manufacturing businesses (ISIC Rev 4. codes 10-33) are eligible; for services businesses, those corresponding to the ISIC Rev 4 codes 41-43, 45-47, 49-53, 55-56, 58, 61-62, 69-75, 79, and 95 are included in the Enterprise Surveys. Cooperatives and collectives are excluded from the Enterprise Surveys. All eligible establishments must be registered with the registration agency. In the case of Indonesia, registration are those establishments in possession of TDP (Company registration Certificate)/NIB (Business Identification Number). Both TDP and NIB are included as the implementation of the Omnibus Law on Job Creation from 2020 was being implemented and businesses were transitioning to the new definitions.
Sample survey data [ssd]
The WBES use stratified random sampling, where the population of establishments is first separated into non-overlapping groups, called strata, and then respondents are selected through simple random sampling from each stratum. The detailed methodology is provided in the Sampling Note (https://www.enterprisesurveys.org/content/dam/enterprisesurveys/documents/methodology/Sampling_Note-Consolidated-2-16-22.pdf). Stratified random sampling has several advantages over simple random sampling. In particular, it:
The WBES typically use three levels of stratification: industry classification, establishment size, and subnational region (used in combination). Starting in 2022, the WBES bases the industry classification on ISIC Rev. 4 (with earlier surveys using ISIC Rev. 3.1). For regional coverage within a country, the WBES has national coverage.
Note: Refer to Sampling Structure section in "The Indonesia 2023 World Bank Enterprise Survey Implementation Report" for detailed methodology on sampling.
Face-to-face [f2f]
The standard WBES questionnaire covers several topics regarding the business environment and business performance. These topics include general firm characteristics, infrastructure, sales and supplies, management practices, competition, innovation, capacity, land and permits, finance, business-government relations, exposure to bribery, labor, and performance. Information about the general structure of the questionnaire is available in the Enterprise Surveys Manual and Guide (https://www.enterprisesurveys.org/content/dam/enterprisesurveys/documents/methodology/Enterprise-Surveys-Manual-and-Guide.pdf).
In addition to the standard set of questions administered to all respondents, the sample was randomly split with two different modules that cover different set of questions: Version A – B-Ready contains additional questions tailored for the Business Ready Report covering infrastructure, trade, government regulations, finance, labor, and other topics. Version B – Green Economy and Taxation covers questions with regards to taxes, green economy, and maternity policies.
The different modules in the dataset are reflected in variable q_version.
Overall survey response rate was 41.2%.
In the aftermath of the German Federal Election of 2025, the CDU were polling at around 29 percent of the vote as of late June 2025, with the party receiving 28.5 percent of the vote in the election held in February. The Ampel's woes continue in 2024 The Ampel coalition came to power in 2021 due to the surprise surge in support for the Social Democrats, who secured almost 26 percent of the vote in that election. Unwilling to re-enter a 'grand coalition' with the Christian Democrats, the SPD instead opted to create a coalition with the center-left environmentalist party, the Greens, and the free-market neoliberal party, the FDP. This unlikely coalition which promised to "dare to make more progress" (mehr Fortschritt wagen) has instead been mired by constant infighting between the three parties, as well as being hit by several external crises, most notably Russia's war of aggression against Ukraine. At the same time, the German economy's post-pandemic recovery has faltered, with the country being one of the few European countries to experience a recession in 2023, while one of the government's key economic plans - a special investment fund designed to bypass the constitutional debt brake - was struck down by the constitutional court in Karlsruhe. These factors have led to consistently declining support for the three governing parties, with the latest poll showing their combined share of the vote being only 33 percent, slightly more than the vote share of the Christian Democrats. While the Greens' vote share would remain roughly equal to what they achieved in 2021, the popularity of the SPD and FDP has collapsed compared to their 2021 levels. The Social Democrats are now the third most popular party in Germany, with Chancellor Olaf Scholz's party on track to achieve their worst election result since 1887. The Liberals (FDP), on the other hand, look likely to not gain any seats in the parliament at all in the next election, as they are currently falling below the five percent threshold to enter the Bundestag (federal parliament). The rise of the far-right in German politics The Ampel's loss has been the far-right's gain, as the Alternative for Germany (AfD) party has seen its fortunes rise consistently in opinion polls since the 2021 election. The party was originally founded to oppose plans for the EU to provide bailouts to struggling member states during the Eurozone debt crisis in the early 2010s, however, following the 2015 Syrian refugee crisis the party pivoted towards a hardline anti-immigration stance. Since then, the AfD has drifted consistently to the right, with one of the dominant factions, known as Der Flügel ("the wing"), being labelled far-right extremists and even, in some cases, fascists. While the federal-level party is currently led by Alice Weidel and Tino Chrupulla, members of the more moderate faction of the party, at the regional-level the party is often led by more extreme figures, such as in the state of Thuringia where party leader Björn Höcke has been labelled in the media as a far-right extremist. In January 2024, an article by investigative journalists brought to light secret meetings between AfD members and far-right supporters to discuss plans for mass deportations of foreigners from Germany, were the AfD to come to power. The scandal led to the largest street protests in the country so far this century, with estimates showing as many as 1.4 million people turning out across the country. Some protesters have even gone so far as to call for a constitutional ban against the AfD, claiming that they pose a threat to German democracy. The party suffered a drop in support in the aftermath of the scandal, with their share of prospective voters declining by four percent from their high-point in January of 2024. The Alternative for Germany currently is the party of choice for 18 percent of German voters, which would make them the second largest party in parliament after the Christian Democrats. While no other party currently says they would work with the AfD on a national level, this Brandmauer ("fire wall") may be tested in regional parliaments during 2024, as the party looks set to come first in several states in East Germany during the year.
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 Annual Population Survey, also held at the UK Data Archive, is derived from the LFS.
The LFS was first conducted biennially from 1973-1983, then annually between 1984 and 1991, comprising a quarterly survey conducted throughout the year and a 'boost' survey in the spring quarter. From 1992 it moved to a quarterly cycle with a sample size approximately equivalent to that of the previous annual data. Northern Ireland was also included in the survey from December 1994. Further information on the background to the QLFS may be found in the documentation.
The UK Data Service also holds a Secure Access version of the QLFS (see below); household datasets; two-quarter and five-quarter longitudinal datasets; LFS datasets compiled for Eurostat; and some additional annual Northern Ireland datasets.
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 (the latest questionnaire available covers July-September 2022). Volumes are updated periodically, 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.
LFS response to COVID-19
From April 2020 to May 2022, additional non-calendar quarter LFS microdata were made available to cover the pandemic period. The first additional microdata to be released covered February to April 2020 and the final non-calendar dataset covered March-May 2022. Publication then returned to calendar quarters only. Within the additional non-calendar COVID-19 quarters, pseudonymised variables Casenop and Hserialp may contain a significant number of missing cases (set as -9). These variables may not be available in full for the additional COVID-19 datasets until the next standard calendar quarter is produced. The income weight variable, PIWT, is not available in the non-calendar quarters, although the person weight (PWT) is included. Please consult the documentation for full details.
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.
2024 Reweighting
In February 2024, reweighted person-level data from July-September 2022 onwards were released. Up to July-September 2023, only the person weight was updated (PWT23); the income weight remains at 2022 (PIWT22). The 2023 income weight (PIWT23) was included from the October-December 2023 quarter. Users are encouraged to read the ONS methodological note of 5 February, Impact of reweighting on Labour Force Survey key indicators: 2024, which includes important information on the 2024 reweighting exercise.
End User Licence and Secure Access QLFS data
Two versions of the QLFS are available from UKDS. One is available under the standard End User Licence (EUL) agreement, and the other is a Secure Access version. The EUL version includes country and Government Office Region geography, 3-digit Standard Occupational Classification (SOC) and 3-digit industry group for main, second and last job (from July-September 2015, 4-digit industry class is available for main job only).
The Secure Access version contains more detailed variables relating to:
The Future of Business Survey is a new source of information on small and medium-sized enterprises (SMEs). Launched in February 2016, the monthly survey - a partnership between Facebook, OECD, and The World Bank - provides a timely pulse on the economic environment in which businesses operate and who those businesses are to help inform decision-making at all levels and to deliver insights that can help businesses grow. The Future of Business Survey provides a perspective from newer and long-standing digitalized businesses and provides a unique window into a new mobilized economy.
Policymakers, researchers and businesses share a common interest in the environment in which SMEs operate, as well their outlook on the future, not least because young and innovative SMEs in particular are often an important source of considerable economic and employment growth. Better insights and timely information about SMEs improve our understanding of economic trends, and can provide new insights that can further stimulate and help these businesses grow.
To help provide these insights, Facebook, OECD and The World Bank have collaborated to develop a monthly survey that attempts to improve our understanding of SMEs in a timely and forward-looking manner. The three organizations share a desire to create new ways to hear from businesses and help them succeed in the emerging digitally-connected economy. The shared goal is to help policymakers, researchers, and businesses better understand business sentiment, and to leverage a digital platform to provide a unique source of information to complement existing indicators.
With more businesses leveraging online tools each day, the survey provides a lens into a new mobilized, digital economy and, in particular, insights on the actors: a relatively unmeasured community worthy of deeper consideration and considerable policy interest.
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The study describes small and medium-sized enterprises.
The target population consists of SMEs that have an active Facebook business Page and include both newer and longer-standing businesses, spanning across a variety of sectors. With more businesses leveraging online tools each day, the survey provides a lens into a new mobilized, digital economy and, in particular, insights on the actors: a relatively unmeasured community worthy of deeper consideration and considerable policy interest.
Sample survey data [ssd]
Twice a year in over 97 countries, the Facebook Survey Team sends the Future of Business to admins and owners of Facebook-designated small business pages. When we share data from this survey, we anonymize responses to all survey questions and only share country-level data publicly. To achieve better representation of the broader small business population, we also weight our results based on known characteristics of the Facebook Page admin population.
A random sample of firms, representing the target population in each country, is selected to respond to the Future of Business Survey each month.
Internet [int]
The survey includes questions about perceptions of current and future economic activity, challenges, business characteristics and strategy. Custom modules include questions related to regulation, access to finance, digital payments, and digital skills. The full questionnaire is available for download.
Response rates to online surveys vary widely depending on a number of factors including survey length, region, strength of the relationship with invitees, incentive mechanisms, invite copy, interest of respondents in the topic and survey design.
Note: Response rates are calculated as the number of respondents who completed the survey divided by the total number of SMEs invited.
Any survey data is prone to several forms of error and biases that need to be considered to understand how closely the results reflect the intended population. In particular, the following components of the total survey error are noteworthy:
Sampling error is a natural characteristic of every survey based on samples and reflects the uncertainty in any survey result that is attributable to the fact that not the whole population is surveyed.
Other factors beyond sampling error that contribute to such potential differences are frame or coverage error (sampling frame of page owners does not include all relevant businesses but also may include individuals that don't represent businesses), and nonresponse error.
Note that the sample is meant to reflect the population of businesses on Facebook, not the population of small businesses in general. This group of digitized SMEs is itself a community worthy of deeper consideration and of considerable policy interest. However, care should be taken when extrapolating to the population of SMEs in general. Moreover, future work should evaluate the external validity of the sample. Particularly, respondents should be compared to the broader population of SMEs on Facebook, and the economy as a whole.
https://www.icpsr.umich.edu/web/ICPSR/studies/4623/termshttps://www.icpsr.umich.edu/web/ICPSR/studies/4623/terms
This poll, conducted August 23-29, 2006, is part of a continuing series of monthly surveys that solicit public opinion on the presidency and on a range of other political and social issues. Residents of New York City were asked for their opinions of the city, and whether they approved of the way Michael Bloomberg was handling his job as mayor. Views were sought on whether the federal government was doing enough to protect New York City and the country from future terrorist attacks, whether the city was prepared for another terrorist attack, the likelihood of another attack in the next few months, and whether the recent arrests of individuals planning attacks on airplanes flying from England to the United States represented a major terrorist threat to the United States. Respondents were asked how often they thought about the events of September 11, 2001, whether they were still dealing with changes caused by the attacks on the World Trade Center, and whether they knew anyone who was injured or killed in the attacks. Several questions asked whether the public was told the truth about the air quality in downtown Manhattan in the months after the terrorist attacks, whether respondents trusted the federal government to tell the truth about possible dangers if another terrorist attack occurred, and whether the government should be financially responsible for the medical bills of people who experienced health problems because of the terrorist attacks. Additional questions addressed the redevelopment of the World Trade Center site and the proposed Freedom Tower, the United States' war on terrorism, the likelihood that Arab Americans, Muslims, and immigrants from the Middle East were being singled out unfairly in the United States, and how patriotic respondents considered themselves to be. Information was also collected on which borough respondents lived in, how long they had lived in New York City, and whether they were living there at the time of the attacks. Demographic information includes sex, age, race, ethnicity, education level, household income, marital status, religious preference, political party affiliation, and political philosophy.
U.S. Government Workshttps://www.usa.gov/government-works
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How does your organization use this dataset? What other NYSERDA or energy-related datasets would you like to see on Open NY? Let us know by emailing OpenNY@nyserda.ny.gov.
This is part 2 (contains: Clothes Washing and Drying; Water Heating; Home Lighting; Pool and Spa; Small Household Appliances; and Miscellaneous Equipment) of 2; part 1 (https://data.ny.gov/d/3m6x-h3qa) contains: Behavior and Demographics; Building Shell; Kitchen Appliances; and Heating and Cooling. The New York State Energy Research and Development Authority (NYSERDA), in collaboration with the New York State Department of Public Service (DPS), conducted a statewide residential baseline study (study) from 2011 to 2014 of the single-family and multifamily residential housing segments, including new construction, and a broad range of energy uses and efficiency measures. This dataset includes 2,982 single-family and 379 multifamily occupant survey completes for a total of 3,361 responses. The survey involved 2,285 Web, 1,041 telephone, and 35 mini-inspection surveys. The survey collected information on the following building characteristics: building shell, kitchen appliances, heating and cooling equipment, water heating equipment, clothes washing and drying equipment, lighting, pool and spa equipment, small household appliances, miscellaneous energy consuming equipment, as well as behaviors and characteristics of respondents.
2024 Presidential General Election Polls | RealClearPolling
Aeromagnetic data were collected along flight lines by instruments in an aircraft that recorded magnetic-field values and locations. This dataset presents latitude, longitude, altitude, and magnetic-field values.
https://www.icpsr.umich.edu/web/ICPSR/studies/3709/termshttps://www.icpsr.umich.edu/web/ICPSR/studies/3709/terms
This special topic poll is part of a continuing series of monthly surveys that solicit public opinion on the presidency and a range of other political and social issues. The study was conducted in part to assess respondents' interest in and opinions about the 2002 elections in New Jersey. Residents of that state were asked to give their opinions of President George W. Bush and his handling of the presidency, as well as their views of United States Senators Jon Corzine and Robert Torricelli, New Jersey governor Jim McGreevey, and former United States Senator Frank Lautenberg. Those queried were asked whether they intended to vote in the November 5, 2002, elections, and for whom they would vote if the election for United States Senator were held that day, given a choice between Lautenberg (Democratic Party) and Douglas Forrester (Republican Party). Respondents were also asked if Lautenberg and Forrester had spent more time during the campaign attacking each other or explaining what they would do if elected, whether they found the Senate race interesting or dull, what they considered to be the most important issue in deciding how to vote, and whether they considered their vote as a vote for or against Bush. Those polled answered sets of questions comparing Lautenberg and Forrester as Senate candidates in terms of their experience, honesty, integrity, age, political orientation, position on Iraq, and their potential decisions on United States Supreme Court nominees. A series of questions addressed the withdrawal of Torricelli from the Senate race and Lautenberg's replacement of him: whether Torricelli did the right thing by withdrawing, whether it was fair that the Democrats replaced him on the ballot, whether the New Jersey Supreme Court made the right decision by allowing his replacement, and whether that decision had made a difference in how the respondent intended to vote. Respondents' views were sought on the use of tax dollars to pay for abortions for indigent women, increased restrictions on the sale of handguns, whether the sentence for a murder conviction should be the death penalty or life in prison without parole, whether companies responsible for major pollution problems should be held accountable for the clean-up costs, and whether the government should cover losses incurred by individuals who chose to invest their Social Security taxes in the stock market. Additional questions probed respondents' views on corruption in New Jersey politics, the importance of which political party controls the United States Congress, the influence of Lautenberg and Forrester campaign advertisements, and whether the respondent would vote for musician Bruce Springsteen if he were a candidate for United States Senator from New Jersey. Background information on respondents includes age, gender, political party, political orientation, voter registration and participation history, handgun ownership, education, religion, marital status, Hispanic descent, race, years in community, and household income.
Access to up-to-date socio-economic data is a widespread challenge in Papua New Guinea and other Pacific Island Countries. To increase data availability and promote evidence-based policymaking, the Pacific Observatory provides innovative solutions and data sources to complement existing survey data and analysis. One of these data sources is a series of High Frequency Phone Surveys (HFPS), which began in 2020 as a way to monitor the socio-economic impacts of the COVID-19 Pandemic, and since 2023 has grown into a series of continuous surveys for socio-economic monitoring. See https://www.worldbank.org/en/country/pacificislands/brief/the-pacific-observatory for further details.
For PNG, after five rounds of data collection from 2020-2022, in April 2023 a monthly HFPS data collection commenced and continued for 18 months (ending September 2024) –on topics including employment, income, food security, health, food prices, assets and well-being. This followed an initial pilot of the data collection from January 2023-March 2023. Data for April 2023-September 2023 were a repeated cross section, while October 2023 established the first month of a panel, which is ongoing as of March 2025. For each month, approximately 550-1000 households were interviewed. The sample is representative of urban and rural areas but is not representative at the province level. This dataset contains combined monthly survey data for all months of the continuous HFPS in PNG. There is one date file for household level data with a unique household ID, and separate files for individual level data within each household data, and household food price data, that can be matched to the household file using the household ID. A unique individual ID within the household data which can be used to track individuals over time within households.
Urban and rural areas of Papua New Guinea
Household, Individual
Sample survey data [ssd]
The initial sample was drawn through Random Digit Dialing (RDD) with geographic stratification from a large random sample of Digicel’s subscribers. As an objective of the survey was to measure changes in household economic wellbeing over time, the HFPS sought to contact a consistent number of households across each province month to month. This was initially a repeated cross section from April 2023-Dec 2023. The resulting overall sample has a probability-based weighted design, with a proportionate stratification to achieve a proper geographical representation. More information on sampling for the cross-sectional monthly sample can be found in previous documentation for the PNG HFPS data.
A monthly panel was established in October 2023, that is ongoing as of March 2025. In each subsequent round of data collection after October 2024, the survey firm would first attempt to contact all households from the previous month, and then attempt to contact households from earlier months that had dropped out. After previous numbers were exhausted, RDD with geographic stratification was used for replacement households.
Computer Assisted Telephone Interview [cati]
he questionnaire, which can be found in the External Resources of this documentation, is in English with a Pidgin translation.
The survey instrument for Q1 2025 consists of the following modules: -1. Basic Household information, -2. Household Roster, -3. Labor, -4a Food security, -4b Food prices -5. Household income, -6. Agriculture, -8. Access to services, -9. Assets -10. Wellbeing and shocks -10a. WASH
The raw data were cleaned by the World Bank team using STATA. This included formatting and correcting errors identified through the survey’s monitoring and quality control process. The data are presented in two datasets: a household dataset and an individual dataset. The individual dataset contains information on individual demographics and labor market outcomes of all household members aged 15 and above, and the household data set contains information about household demographics, education, food security, food prices, household income, agriculture activities, social protection, access to services, and durable asset ownership. The household identifier (hhid) is available in both the household dataset and the individual dataset. The individual identifier (id_member) can be found in the individual dataset.
The People and Nature Survey for England gathers information on people’s experiences and views about the natural environment, and its contributions to our health and wellbeing.
Note that these are experimental statistics and indicators have been generated using interim methods. There will likely be differences between these monthly interim indicators and full People and Nature Survey results once methods have been finalised.
This publication reports a set of weighted national interim indicators from the survey, which have been generated using data collected in November 2020 from a sample of approx. 2,000 adults (16+):
The full associated dataset, and findings from the first two quarters of data, have been published.
The National Survey of Household Income and Expenditure (ENIGH) aims to provide a statistical overview of the behavior of household income and expenditure in terms of its amount, origin and distribution. In addition, it offers information on the occupational and sociodemographic characteristics of the members of the household, as well as the characteristics of the housing infrastructure and household equipment.
The ENIGH is part of the Information System of National Interest (IIN), which means that the results obtained from this project are mandatory for the Federation, the states and the municipalities, in order to contribute to national development.
In 1984, a trend began to broaden the objectives and homogenize the methodology, taking into account international recommendations and the information requirements of the different users, taking care of historical comparability.
Periodicity: Since 1992 it has been carried out biennially (every two years) with the exception of 2005 when an extraordinary survey was carried out.
Target population: It is made up of the households of nationals or foreigners, who usually reside in private homes within the national territory.
Selection Unit: Private home. The dwellings are chosen through a meticulous statistical process that guarantees that the results obtained from only a part of the population (sample) can be generalized to the total.
Sampling Frame: INEGI's multi-purpose framework is made up of demographic and cartographic information obtained from the 2010 Population and Housing Census.
Observation unit: The home.
Unit of analysis: The household, the dwelling and the members of the household.
Thematic coverage:
Characteristics of the house. Residents and identification of households in the dwelling. Sociodemographic characteristics of the residents of the dwelling. Home equipment, services. Activity condition and occupational characteristics of household members aged 12 and over. Total current income (monetary and non-monetary) of households. Financial and capital perceptions of households and their members. Current monetary expenditure of households. Financial and capital expenditures of households.
The different concepts of the ENIGH are governed by recommendations agreed upon in international conventions, for example:
The resolutions and reports of the 18 International Conferences on Labour Statistics, of the International Labour Organization (ILO).
The final report and recommendations of the Canberra Group, an expert group on "Household Income Statistics".
Manual of Household Surveys. Department of International Economic and Social Affairs, Bureau of Statistics. United Nations, New York, 1987.
They are also articulated with the CNational Accounts and with the Household Surveys carried out by the INEGI.
Sample size: At the national level, including the ten-one, there are 93,186 private homes.
Survey period: The collection of information will take place between August 11 and November 18 of this year. Throughout this period, ten cuts are made, each organized in ten days; Therefore, each of these cuts will be known as tens (see calendar in the annex).
Workload: According to the meticulousness in the recording of information in this project, a load of six interviews in private homes per dozen has been defined for each interviewer. The number of interviews may decrease or increase according to several factors: non-response, recovery from non-response, or additional households.
National and at the state level - Urban: localities with 2,500 or more inhabitants - Rural: localities with less than 2,500 inhabitants
The household, the dwelling and the members of the household.
The survey is aimed at households in the national territory.
Probabilistic household survey
The design of the exhibition for ENIGH-2018 is characterized by being probabilistic; consequently, the results obtained from the survey are generalized to the entire population of the study domain; in turn, it is two-stage, stratified and by clusters, where the ultimate unit of selection is the dwelling and the unit of observation is the household.
The ENIGH-2018 subsample was selected from the 2012 INEGI master sample, this master sample was designed and selected from the 2012 Master Sampling Framework (Marco Maestro de Muestreo (MMM)) which was made up of housing clusters called Primary Sampling Units (PSU), built from the cartographic and demographic information obtained from the 2010 Population and Housing Census. The master sample allows the selection of subsamples for all housing surveys carried out by INEGI; Its design is probabilistic, stratified, single-stage and by clusters, since it is in them that the dwellings that make up the subsamples of the different surveys were selected in a second stage. The design of the MMM was built as follows:
Formation of the primary sampling units (PSU)
First, the set of PSUs that will cover the national territory is built.
The primary sampling units are made up of groups of dwellings with differentiated characteristics depending on the area to which they belong, as specified below:
a) In high urban areas
The minimum size of a PSU is 80 inhabited dwellings and the maximum is 160. They can be made up of:
• A block. • The union of two or more contiguous blocks of the same AGEB. • The union of two or more contiguous blocks of different AGEBs in the same locality. • The union of two or more contiguous blocks from different localities, which belong to the same size of locality.
b) In urban complement: The minimum size of a PSU is 160 inhabited dwellings and the maximum is 300. They can be made up of:
• A block. • The union of two or more contiguous blocks of the same AGEB. • The union of two or more contiguous blocks of different AGEBs in the same locality. • The union of two or more contiguous blocks from different AGEBs and localities, but from the same municipality.
c) In rural areas: The minimum size of a PSU is 160 inhabited dwellings and the maximum is 300. They can be made up of:
• An AGEB. • Part of an AGEB. • The union of two or more adjoining AGEBs in the same municipality. • The union of an AGEB with a part of another adjoining AGEB in the same municipality.
The total number of PSUs formed was 240,912.
Stratification
Once the set of PSUs has been constructed, those with similar characteristics are grouped, that is, they are stratified.
The political division of the country and the formation of localities differentiated by their size, naturally form a geographical stratification.
In each federal entity there are three areas, divided into zones.
High urban, Zone 01 to 09, Cities with 100,000 or more inhabitants.
Urban complement, Zone 25, 35, 45 and 55, From 50,000 to 99,999 inhabitants, 15,000 to 49,999 inhabitants, 5,000 to 14,999 inhabitants, 2,500 to 4,999 inhabitants.
Rural, Zone 60, Localities with less than 2,500 inhabitants.
At the same time, four sociodemographic strata were formed in which all the PSUs in the country were grouped, this stratification considers the sociodemographic characteristics of the inhabitants of the dwellings, as well as the physical characteristics and equipment of the same, expressed through 34 indicators built with information from the 2010 Population and Housing Census*, for which multivariate statistical methods were used.
In this way, each PSU was classified into a single geographical and a sociodemographic stratum.
As a result, there are a total of 683 strata throughout the country.
Selection of the PSUs of the master sample The PSUs of the master sample were selected by means of a sampling with probability proportional to the size.
Sample size For the calculation of the sample size of the ENIGH-2018, the average total current income per household was considered as a reference variable.
As a result of the sum of the 87,826 homes selected and 1,312 additional homes that were found in those homes, the total amounted to 89,138 households.
Face-to-face [f2f]
Six collection instruments will be used to collect information in each household, four of which concentrate information on the household as a whole.
These are:
In the other three, individual information is recorded for people:
Capture activities
The capture consisted of transferring the information from the questionnaires that were fully answered to electronic means through IKTAN, in accordance with the procedures established for the capture process of the ENIGH 2018.
The Person in Charge of Capture and Validation, together with his work team, began the capture of the questionnaires collected by each Interviewer, organized by packages of questionnaires of each page with the result of a complete interview, following the established order:
• Household and housing questionnaire. • Questionnaires for people under 12 years of age. • Questionnaires for people aged 12 and over. • Questionnaires for home businesses. • Household expenditure questionnaire. • Daily expenses booklet.
In addition, the IKTAN made it possible to record and know the progress or conclusion of workloads.
Validation activities
In parallel to the capture, the state coordination
https://fred.stlouisfed.org/legal/#copyright-public-domainhttps://fred.stlouisfed.org/legal/#copyright-public-domain
Graph and download economic data for Employed Persons in New York County, NY (LAUCN360610000000005A) from 1990 to 2024 about New York County, NY; New York; NY; household survey; employment; persons; and USA.
To facilitate the use of data collected through the high-frequency phone surveys on COVID-19, the Living Standards Measurement Study (LSMS) team has created the harmonized datafiles using two household surveys: 1) the country’ latest face-to-face survey which has become the sample frame for the phone survey, and 2) the country’s high-frequency phone survey on COVID-19.
The LSMS team has extracted and harmonized variables from these surveys, based on the harmonized definitions and ensuring the same variable names. These variables include demography as well as housing, household consumption expenditure, food security, and agriculture. Inevitably, many of the original variables are collected using questions that are asked differently. The harmonized datafiles include the best available variables with harmonized definitions.
Two harmonized datafiles are prepared for each survey. The two datafiles are:
1. HH: This datafile contains household-level variables. The information include basic household characterizes, housing, water and sanitation, asset ownership, consumption expenditure, consumption quintile, food security, livestock ownership. It also contains information on agricultural activities such as crop cultivation, use of organic and inorganic fertilizer, hired labor, use of tractor and crop sales.
2. IND: This datafile contains individual-level variables. It includes basic characteristics of individuals such as age, sex, marital status, disability status, literacy, education and work.
National
The survey covered all de jure households excluding prisons, hospitals, military barracks, and school dormitories.
Sample survey data [ssd]
See “Uganda - National Panel Survey 2019-2020” and “Uganda - High-Frequency Phone Survey on COVID-19 2020-2021” documentations available in the Microdata Library for details.
Computer Assisted Personal Interview [capi]
Uganda National Panel Survey 2019-2020 and Uganda High-Frequency Phone Survey on COVID-19 2020-2021 data were harmonized following the harmonization guidelines (see “Harmonized Datafiles and Variables for High-Frequency Phone Surveys on COVID-19” for more details).
The high-frequency phone survey on COVID-19 has multiple rounds of data collection. When variables are extracted from multiple rounds of the survey, the originating round of the survey is noted with “_rX” in the variable name, where X represents the number of the round. For example, a variable with “_r3” presents that the variable was extracted from Round 3 of the high-frequency phone survey. Round 0 refers to the country’s latest face-to-face survey which has become the sample frame for the high-frequency phone surveys on COVID-19. When the variables are without “_rX”, they were extracted from Round 0.
See “Uganda - National Panel Survey 2019-2020” and “Uganda - High-Frequency Phone Survey on COVID-19 2020-2021” documentations available in the Microdata Library for details.
https://www.icpsr.umich.edu/web/ICPSR/studies/9357/termshttps://www.icpsr.umich.edu/web/ICPSR/studies/9357/terms
This data collection focuses on the 1989 New York City mayoral election. Parts 1-3 are telephone surveys conducted from late January through early September, prior to the primary election. In these surveys, respondents were asked if they were registered to vote, what their party designation was, if they intended to vote in the mayoral primary, for whom they would vote if the primary were held that day, toward which candidate they were leaning, and how strongly they supported that candidate. Respondents also were questioned about Ed Koch's performance as mayor, the most important problem facing New York City, the overall quality of life in New York City, personal qualities of a mayoral candidate they liked or disliked, and whether they agreed with a series of statements relating to abortion, the death penalty, and race relations. In Part 4, voters in the primary election were asked to fill out questionnaires as they exited the polling places. Questions asked include whether they voted in the Democratic or Republican primary, for whom they voted, and for which candidate they would vote if the general election were being held that day. Parts 5-8, conducted from late September through early November, are telephone surveys tracking voter opinion prior to the mayoral election. Respondents were asked if they were registered to vote, what their party designation was, and for whom they would vote if the election were held that day. Other topics covered include race relations, the respondent's knowledge and opinion of the candidates Rudolph Giulian and David Dinkins, and factors that would induce the respondent to vote for a candidate. In Part 9, voters in the mayoral general election were asked to complete questionnaires as they exited the polling places. Questions put to respondents included for whom they voted and why, how they had voted on Ballot Question #2 regarding abolishing the Board of Estimate and enlarging the City Council, if they felt their choice for mayor would help to solve New York City's biggest problems and what those problems were. Background information on respondents in this collection includes political alignment, 1985 mayoral vote choice, education, age, religion, race, sex, income, and borough of residence.
This data represents the GIS Version of the Public Land Survey System including both rectangular and non-rectangular survey data. The rectangular survey data are a reference system for land tenure based upon meridian, township/range, section, section subdivision and government lots. The non-rectangular survey data represent surveys that were largely performed to protect and/or convey title on specific parcels of land such as mineral surveys and tracts. The data are largely complete in reference to the rectangular survey data at the level of first division. However, the data varies in terms of granularity of its spatial representation as well as its content below the first division. Therefore, depending upon the data source and steward, accurate subdivision of the rectangular data may not be available below the first division and the non-rectangular minerals surveys may not be present. At times, the complexity of surveys rendered the collection of data cost prohibitive such as in areas characterized by numerous, overlapping mineral surveys. In these situations, the data were often not abstracted or were only partially abstracted and incorporated into the data set. These PLSS data were compiled from a broad spectrum or sources including federal, county, and private survey records such as field notes and plats as well as map sources such as USGS 7 ½ minute quadrangles. The metadata in each data set describes the production methods for the data content. This data is optimized for data publication and sharing rather than for specific "production" or operation and maintenance. A complete PLSS data set includes the following: PLSS Townships, First Divisions and Second Divisions (the hierarchical break down of the PLSS Rectangular surveys) PLSS Special surveys (non-rectangular components of the PLSS) Meandered Water, Corners, Metadata at a Glance (which identified last revised date and data steward) and Conflicted Areas (known areas of gaps or overlaps or inconsistencies). The Entity-Attribute section of this metadata describes these components in greater detail. These are the corners of the PLSS. This data set contains summary information about the coordinate location and reliability of corner coordinate information.
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License information was derived automatically
Granite State Poll is a quarterly poll conducted by the University of New Hampshire Survey Center. The poll sample consists of about 500 New Hampshire adults with a working telephone across the state. Each poll contains a series of basic demographic questions that are repeated in future polls, as well as a set of unique questions that are submitted by clients. This poll includes four questions related to preferences about dams. These questions were designed by Natallia Leuchanka Diessner, Catherine M. Ashcraft, Kevin H. Gardner, and Lawrence C. Hamilton as part of the "Future of Dams" project.This Technical Report was written by the UNH Survey Center and describes the protocols and standards of the Granite State Poll #68 (Client Poll), which includes questions related to preferences about dams, designed by Natallia Leuchanka Diessner, Catherine M. Ashcraft, Kevin H. Gardner, and Lawrence C. Hamilton as part of the "Future of Dams" project.The first file is a screenshot of the Technical Report to provide a preview for Figshare. The second file is the Technical Report in Microsoft Word format.