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Employment Rate in Peru increased to 94.40 percent in May from 94.10 percent in April of 2025. This dataset provides - Peru Employment Rate- actual values, historical data, forecast, chart, statistics, economic calendar and news.
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License information was derived automatically
Employment Rate in Sweden decreased to 68.60 percent in May from 69 percent in April of 2025. This dataset provides - Sweden Employment Rate- actual values, historical data, forecast, chart, statistics, economic calendar and news.
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License information was derived automatically
Employment Rate in Greece decreased to 89.60 percent in the first quarter of 2025 from 90.50 percent in the fourth quarter of 2024. This dataset provides - Greece Employment Rate- actual values, historical data, forecast, chart, statistics, economic calendar and news.
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This data set shows unemployment rate by state in Malaysia for year 1982 until 2020. The statistics is derived from Labour Force Survey (LFS) which is conducted every month using household approach and refers to those between the working age of 15-64 years old. Unemployment rate is the proportion of unemployed population to the total population in the labour force, which measures the percentage of unemployed population in the labour force. W.P. Labuan is gazzeted as a Federal Territory in 1984 while W.P. Putrajaya is gazzeted as a Federal Territory in 2001. The statistics for W.P. Putrajaya for 2001-2010 is treated as part of Selangor. Statistics for W.P. Putrajaya is available separately since 2011 onwards. LFS was not conducted during the years 1991 and 1994. No. of Views : 6751
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Unemployment Rate in Colombia increased to 9 percent in May from 8.80 percent in April of 2025. This dataset provides the latest reported value for - Colombia Unemployment Rate - plus previous releases, historical high and low, short-term forecast and long-term prediction, economic calendar, survey consensus and news.
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License information was derived automatically
This data set shows unemployment rate by sex and state in Malaysia for year 1982 until 2020. The statistics is derived from Labour Force Survey (LFS) which is conducted every month using household approach and refers to those between the working age of 15-64 years old. Unemployment rate is the proportion of unemployed population to the total population in the labour force, which measures the percentage of unemployed population in the labour force. W.P. Labuan is gazzeted as a Federal Territory in 1984 while W.P. Putrajaya is gazzeted as a Federal Territory in 2001. The statistics for W.P. Putrajaya for 2001-2010 is treated as part of Selangor. Statistics for W.P. Putrajaya is available separately since 2011 onwards. LFS was not conducted during the years 1991 and 1994. No. of Views : 732
These data are taken from the ANNUAL datasets from the Labour Force Survey (LFS) carried out by the Office for National Statistics (ONS), providing labour market data back to 1996 for the NUTS2 areas in Wales, and back to 2001 for the local authorities in Wales. The availability of local authority data is dependent upon on an enhanced sample (around 350 per cent larger) for the annual LFS, which commenced in 2001. For years labelled 1996 to 2004 in this dataset, the actual periods covered are the 12 months running from March in the year given to February in the following year (e.g. 2001 = 1 March 2001 to 28 February 2002). Since 2004, the annual data have been produced on a rolling annual basis, updated every three months, and the dataset is now referred to as the Annual Population Survey (APS). The rolling annual averages are on a calendar basis with the first rolling annual average presented here covering the period 1 January 2004 to 31 December 2004, followed by data covering the period 1 April 2004 to 31 March 2005, with rolling quarterly updates applied thereafter. Note therefore that the consecutive rolling annual averages overlap by nine months, and there is also a two-month overlap between the last period presented on the former March to February basis, and the first period on the new basis. The population can be broken down into economically active and economically inactive populations. The economically active population is made up of persons in employment, and persons unemployed according to the International Labour Organisation (ILO) definition. This report allows the user to access these data. Although each measure is available for different population bases, there is an official standard population base used for each of the measures, as follows. Population aged 16 and over: Economic activity level, Employment level, ILO unemployment level Population aged 16-64: Economic inactivity level 16-64 population is used as the base for economic inactivity. By excluding persons of pensionable age who are generally retired and therefore economically inactive, this gives a more appropriate measure of workforce inactivity. Rates for each of the above measures are also calculated in a standard manner and are available in the dataset. With the exception of the ILO unemployment rate, each rate is defined in terms of the shares of population that fall into each category. The ILO unemployment rate is defined as ILO unemployed persons as a percentage of the economically active population. Although each rate is available for the different population bases, there is an official standard population base used for each of the rates, as follows. Percentage of population aged 16-64: Economic activity, Employment,. Economic inactivity Percentage of economically active population aged 16 and over: ILO unemployment
In 2023, it was estimated that over 161 million Americans were in some form of employment, while 3.64 percent of the total workforce was unemployed. This was the lowest unemployment rate since the 1950s, although these figures are expected to rise in 2023 and beyond. 1980s-2010s Since the 1980s, the total United States labor force has generally risen as the population has grown, however, the annual average unemployment rate has fluctuated significantly, usually increasing in times of crisis, before falling more slowly during periods of recovery and economic stability. For example, unemployment peaked at 9.7 percent during the early 1980s recession, which was largely caused by the ripple effects of the Iranian Revolution on global oil prices and inflation. Other notable spikes came during the early 1990s; again, largely due to inflation caused by another oil shock, and during the early 2000s recession. The Great Recession then saw the U.S. unemployment rate soar to 9.6 percent, following the collapse of the U.S. housing market and its impact on the banking sector, and it was not until 2016 that unemployment returned to pre-recession levels. 2020s 2019 had marked a decade-long low in unemployment, before the economic impact of the Covid-19 pandemic saw the sharpest year-on-year increase in unemployment since the Great Depression, and the total number of workers fell by almost 10 million people. Despite the continuation of the pandemic in the years that followed, alongside the associated supply-chain issues and onset of the inflation crisis, unemployment reached just 3.67 percent in 2022 - current projections are for this figure to rise in 2023 and the years that follow, although these forecasts are subject to change if recent years are anything to go by.
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Historical chart and dataset showing U.S. unemployment rate by year from 1991 to 2024.
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License information was derived automatically
This dataset shows the Incidence of Long-term Unemployment by Sex, 2001-2021, Malaysia. Footnote The 2011-2014 statistics was updated based on the year's population estimates. The incidence of long-term unemployment – those unemployed for one year or longer as a proportion of total unemployed. Source : Department of Statistics, Malaysia No. of Views : 226
Unemployment rate, participation rate, and employment rate by educational attainment, gender and age group, annual.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
This data set shows unemployment rate by urban and rural strata for all states in Malaysia from year 1982 until 2020. The statistics is derived from Labour Force Survey (LFS) which is conducted every month using household approach and refers to those between the working age of 15-64 years old. Unemployment rate is the proportion of unemployed population to the total population in the labour force, which measures the percentage of unemployed population in the labour force. W.P. Labuan is gazzeted as a Federal Territory in 1984 while W.P. Putrajaya is gazzeted as a Federal Territory in 2001. The statistics for W.P. Putrajaya for 2001-2010 is treated as part of Selangor. Statistics for W.P. Putrajaya is available separately since 2011 onwards. LFS was not conducted during the years 1991 and 1994. No. of Views : 474
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Easily lookup US historical demographics by county FIPS or zipcode in seconds with this file containing over 5,901 different columns including:
*Lat/Long *Boundaries *State FIPS *Population from 2010-2019 *Death Rate from 2010-2019 *Unemployment from 2001-2020 *Education from 1970-2019 *Gender and Age Population
Provided by bitrook.com to help Data Scientists clean data faster.
https://www.ers.usda.gov/data-products/county-level-data-sets/download-data/
https://www.ers.usda.gov/data-products/county-level-data-sets/download-data/
https://www.ers.usda.gov/data-products/county-level-data-sets/download-data/
https://data.world/niccolley/us-zipcode-to-county-state
https://www2.census.gov/programs-surveys/popest/datasets/2010-2019/counties/asrh/cc-est2019-agesex-**.csv https://www2.census.gov/programs-surveys/popest/technical-documentation/file-layouts/2010-2019/cc-est2019-agesex.pdf
https://www2.census.gov/programs-surveys/popest/datasets/2010-2019/counties/asrh/cc-est2019-alldata.csv https://www2.census.gov/programs-surveys/popest/technical-documentation/file-layouts/2010-2019/cc-est2019-alldata.pdf
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License information was derived automatically
This dataset shows the Ratio of Youth Unemployment Rate to Adult Unemployment Rate by Sex, 2001 - 2021, Malaysia. Footnote The 2011-2014 statistics was updated based on the years population estimates. Youth refers to population aged 15-24 years old. Source : Department of Statistics, Malaysia No. of Views : 70
Abstract copyright UK Data Service and data collection copyright owner.
Background
The Labour Force Survey (LFS) is a unique source of information using international definitions of employment and unemployment and economic inactivity, together with a wide range of related topics such as occupation, training, hours of work and personal characteristics of household members aged 16 years and over. It is used to inform social, economic and employment policy. The LFS was first conducted biennially from 1973-1983. Between 1984 and 1991 the survey was carried out annually and consisted of a quarterly survey conducted throughout the year and a 'boost' survey in the spring quarter (data were then collected seasonally). From 1992 quarterly data were made available, with a quarterly sample size approximately equivalent to that of the previous annual data. The survey then became known as the Quarterly Labour Force Survey (QLFS). From December 1994, data gathering for Northern Ireland moved to a full quarterly cycle to match the rest of the country, so the QLFS then covered the whole of the UK (though some additional annual Northern Ireland LFS datasets are also held at the UK Data Archive). Further information on the background to the QLFS may be found in the documentation.
Longitudinal data
The LFS retains each sample household for five consecutive quarters, with a fifth of the sample replaced each quarter. The main survey was designed to produce cross-sectional data, but the data on each individual have now been linked together to provide longitudinal information. The longitudinal data comprise two types of linked datasets, created using the weighting method to adjust for non-response bias. The two-quarter datasets link data from two consecutive waves, while the five-quarter datasets link across a whole year (for example January 2010 to March 2011 inclusive) and contain data from all five waves. A full series of longitudinal data has been produced, going back to winter 1992. Linking together records to create a longitudinal dimension can, for example, provide information on gross flows over time between different labour force categories (employed, unemployed and economically inactive). This will provide detail about people who have moved between the categories. Also, longitudinal information is useful in monitoring the effects of government policies and can be used to follow the subsequent activities and circumstances of people affected by specific policy initiatives, and to compare them with other groups in the population. There are however methodological problems which could distort the data resulting from this longitudinal linking. The ONS continues to research these issues and advises that the presentation of results should be carefully considered, and warnings should be included with outputs where necessary.
LFS Documentation
The documentation available from the Archive to accompany LFS datasets largely consists of the latest version of each user guide volume alongside the appropriate questionnaire for the year concerned. However, volumes are updated periodically by ONS, so users are advised to check the latest documents on the ONS Labour Force Survey - User Guidance pages before commencing analysis. This is especially important for users of older QLFS studies, where information and guidance in the user guide documents may have changed over time.
Occupation data for 2021 and 2022 data files
The ONS has identified an issue with the collection of some occupational data in 2021 and 2022 data files in a number of their surveys. While they estimate any impacts will be small overall, this will affect the accuracy of the breakdowns of some detailed (four-digit Standard Occupational Classification (SOC)) occupations, and data derived from them. Further information can be found in the ONS article published on 11 July 2023: Revision of miscoded occupational data in the ONS Labour Force Survey, UK: January 2021 to September 2022.
2022 Weighting
The population totals used for the latest LFS estimates use projected growth rates from Real Time Information (RTI) data for UK, EU and non-EU populations based on 2021 patterns. The total population used for the LFS therefore does not take into account any changes in migration, birth rates, death rates, and so on since June 2021, and hence levels estimates may be under- or over-estimating the true values and should be used with caution. Estimates of rates will, however, be robust.
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Graph and download economic data for Unemployment Rate - 20 Yrs. & over (LNS14000024) from Jan 1948 to Jun 2025 about 20 years +, household survey, unemployment, rate, and USA.
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License information was derived automatically
Employment Rate in Colombia increased to 58.19 percent in May from 58.13 percent in April of 2025. This dataset provides - Colombia Employment Rate- actual values, historical data, forecast, chart, statistics, economic calendar and news.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Statistical open data on LAU regions of Slovakia, Czech Republic, Poland, Hungary (and other countries in the future). LAU1 regions are called counties, okres, okresy, powiat, járás, járási, NUTS4, LAU, Local Administrative Units, ... and there are 733 of them in this V4 dataset. Overall, we cover 733 regions which are described by 137.828 observations (panel data rows) and more than 1.760.229 data points.
This LAU dataset contains panel data on population, on age structure of inhabitants, on number and on structure of registered unemployed. Dataset prepared by Michal Páleník. Output files are in json, shapefiles, xls, ods, json, topojson or CSV formats. Downloadable at zenodo.org.
This dataset consists of:
data on unemployment (by gender, education and duration of unemployment),
data on vacancies,
open data on population in Visegrad counties (by age and gender),
data on unemployment share.
Combined latest dataset
dataset of the latest available data on unemployment, vacancies and population
dataset includes map contours (shp, topojson or geojson format), relation id in OpenStreetMap, wikidata entry code,
it also includes NUTS4 code, LAU1 code used by national statistical office and abbreviation of the region (usually license plate),
source of map contours is OpenStreetMap, licensed under ODbL
no time series, only most recent data on population and unemployment combined in one output file
columns: period, lau, name, registered_unemployed, registered_unemployed_females, disponible_unemployed, low_educated, long_term, unemployment_inflow, unemployment_outflow, below_25, over_55, vacancies, pop_period, TOTAL, Y15-64, Y15-64-females, local_lau, osm_id, abbr, wikidata, population_density, area_square_km, way
Slovakia – SK: 79 LAU1 regions, data for 2024-10-01, 1.659 data,
Czech Republic – CZ: 77 LAU1 regions, data for 2024-10-01, 1.617 data,
Poland – PL: 380 LAU1 regions, data for 2024-09-01, 6.840 data,
Hungary – HU: 197 LAU1 regions, data for 2024-10-01, 2.955 data,
13.071 data in total.
column/number of observations description SK CZ PL HU
period period (month and year) the data is for 79 77 380 197
lau LAU code of the region 79 77 380 197
name name of the region in local language 79 77 380 197
registered_unemployed number of unemployed registered at labour offices 79 77 380 197
registered_unemployed_females number of unemployed women 79 77 380 197
disponible_unemployed unemployed able to accept job offer 79 77 0 0
low_educated unmployed without secondary school (ISCED 0 and 1) 79 77 380 197
long_term unemployed for longer than 1 year 79 77 380 0
unemployment_inflow inflow into unemployment 79 77 0 0
unemployment_outflow outflow from unemployment 79 77 0 0
below_25 number of unemployed below 25 years of age 79 77 380 197
over_55 unemployed older than 55 years 79 77 380 197
vacancies number of vacancies reported by labour offices 79 77 380 0
pop_period date of population data 79 77 380 197
TOTAL total population 79 77 380 197
Y15-64 number of people between 15 and 64 years of age, population in economically active age 79 77 380 197
Y15-64-females number of women between 15 and 64 years of age 79 77 380 197
local_lau region's code used by local labour offices 79 77 380 197
osm_id relation id in OpenStreetMap database 79 77 380 197
abbr abbreviation used for this region 79 77 380 0
wikidata wikidata identification code 79 77 380 197
population_density population density 79 77 380 197
area_square_km area of the region in square kilometres 79 77 380 197
way geometry, polygon of given region 79 77 380 197
Unemployment dataset
time series of unemployment data in Visegrad regions
by gender, duration of unemployment, education level, age groups, vacancies,
columns: period, lau, name, registered_unemployed, registered_unemployed_females, disponible_unemployed, low_educated, long_term, unemployment_inflow, unemployment_outflow, below_25, over_55, vacancies
Slovakia – SK: 79 LAU1 regions, data for 334 periods (1997-01-01 ... 2024-10-01), 202.082 data,
Czech Republic – CZ: 77 LAU1 regions, data for 244 periods (2004-07-01 ... 2024-10-01), 147.528 data,
Poland – PL: 380 LAU1 regions, data for 189 periods (2005-03-01 ... 2024-09-01), 314.100 data,
Hungary – HU: 197 LAU1 regions, data for 106 periods (2016-01-01 ... 2024-10-01), 104.408 data,
768.118 data in total.
column/number of observations description SK CZ PL HU
period period (month and year) the data is for 26 386 18 788 71 772 20 882
lau LAU code of the region 26 386 18 788 71 772 20 882
name name of the region in local language 26 386 18 788 71 772 20 882
registered_unemployed number of unemployed registered at labour offices 26 386 18 788 71 772 20 882
registered_unemployed_females number of unemployed women 26 386 18 788 62 676 20 882
disponible_unemployed unemployed able to accept job offer 25 438 18 788 0 0
low_educated unmployed without secondary school (ISCED 0 and 1) 11 771 9855 41 388 20 881
long_term unemployed for longer than 1 year 24 253 9855 41 388 0
unemployment_inflow inflow into unemployment 26 149 16 478 0 0
unemployment_outflow outflow from unemployment 26 149 16 478 0 0
below_25 number of unemployed below 25 years of age 11 929 9855 17 100 20 881
over_55 unemployed older than 55 years 11 929 9855 17 100 20 882
vacancies number of vacancies reported by labour offices 11 692 18 788 62 676 0
Population dataset
time series on population by gender and 5 year age groups in V4 counties
columns: period, lau, name, gender, TOTAL, Y00-04, Y05-09, Y10-14, Y15-19, Y20-24, Y25-29, Y30-34, Y35-39, Y40-44, Y45-49, Y50-54, Y55-59, Y60-64, Y65-69, Y70-74, Y75-79, Y80-84, Y85-89, Y90-94, Y_GE95, Y15-64
Slovakia – SK: 79 LAU1 regions, data for 28 periods (1996, 1997, 1998, 1999, 2000, 2001, 2002, 2003, 2004, 2005, 2006, 2007, 2008, 2009, 2010, 2011, 2012, 2013, 2014, 2015, 2016, 2017, 2018, 2019, 2020, 2021, 2022, 2023), 152.628 data,
Czech Republic – CZ: 78 LAU1 regions, data for 24 periods (2000, 2001, 2002, 2003, 2004, 2005, 2006, 2007, 2008, 2009, 2010, 2011, 2012, 2013, 2014, 2015, 2016, 2017, 2018, 2019, 2020, 2021, 2022, 2023), 125.862 data,
Poland – PL: 382 LAU1 regions, data for 29 periods (1995, 1996, 1997, 1998, 1999, 2000, 2001, 2002, 2003, 2004, 2005, 2006, 2007, 2008, 2009, 2010, 2011, 2012, 2013, 2014, 2015, 2016, 2017, 2018, 2019, 2020, 2021, 2022, 2023), 626.941 data,
Hungary – HU: 197 LAU1 regions, data for 11 periods (2013, 2014, 2015, 2016, 2017, 2018, 2019, 2020, 2021, 2022, 2023), 86.680 data,
992.111 data in total.
column/number of observations description SK CZ PL HU
period period (month and year) the data is for 6636 5574 32 883 4334
lau LAU code of the region 6636 5574 32 883 4334
name name of the region in local language 6636 5574 32 883 4334
gender gender (male or female) 6636 5574 32 883 4334
TOTAL total population 6636 5574 32 503 4334
Y00-04 inhabitants between 00 to 04 years inclusive 6636 5574 32 503 4334
Y05-09 number of inhabitants between 05 to 09 years of age 6636 5574 32 503 4334
Y10-14 number of people between 10 to 14 years inclusive 6636 5574 32 503 4334
Y15-19 number of inhabitants between 15 to 19 years of age 6636 5574 32 503 4334
Y20-24 number of people between 20 to 24 years inclusive 6636 5574 32 503 4334
Y25-29 number of inhabitants between 25 to 29 years of age 6636 5574 32 503 4334
Y30-34 inhabitants between 30 to 34 years inclusive 6636 5574 32 503 4334
Y35-39 number of inhabitants between 35 to 39 years of age 6636 5574 32 503 4334
Y40-44 inhabitants between 40 to 44 years inclusive 6636 5574 32 503 4334
Y45-49 number of inhabitants younger than 49 and older than 45 years 6636 5574 32 503 4334
Y50-54 inhabitants between 50 to 54 years inclusive 6636 5574 32 503 4334
Y55-59 number of inhabitants between 55 to 59 years of age 6636 5574 32 503 4334
Y60-64 inhabitants between 60 to 64 years inclusive 6636 5574 32 503 4334
Y65-69 number of inhabitants younger than 69 and older than 65 years 6636 5574 32 503 4334
Y70-74 inhabitants between 70 to 74 years inclusive 6636 5574 24 670 4334
Y75-79 number of inhabitants between 75 to 79 years of age 6636 5574 24 670 4334
Y80-84 number of people between 80 to 84 years inclusive 6636 5574 24 670 4334
Y85-89 number of inhabitants younger than 89 and older than 85 years 6636 5574 0 0
Y90-94 inhabitants between 90 to 94 years inclusive 6636 5574 0 0
Y_GE95 number of people 95 years or older 6636 3234 0 0
Y15-64 number of people between 15 and 64 years of age, population in economically active age 6636 5574 32 503 4334
Notes
more examples at www.iz.sk
NUTS4 / LAU1 / LAU codes for HU and PL are created by me, so they can (and will) change in the future; CZ and SK NUTS4 codes are used by local statistical offices, so they should be more stable
NUTS4 codes are consistent with NUTS3 codes used by Eurostat
local_lau variable is an identifier used by local statistical office
abbr is abbreviation of region's name, used for map purposes (usually cars' license plate code; except for Hungary)
wikidata is code used by wikidata
osm_id is region's relation number in the OpenStreetMap database
Example outputs
you can download data in CSV, xml, ods, xlsx, shp, SQL, postgis, topojson, geojson or json format at 📥 doi:10.5281/zenodo.6165135
Counties of Slovakia – unemployment rate in Slovak LAU1 regions
Regions of the Slovak Republic
Unemployment of Czechia and Slovakia – unemployment share in LAU1 regions of Slovakia and Czechia
interactive map on unemployment in Slovakia
Slovakia – SK, Czech Republic – CZ, Hungary – HU, Poland – PL, NUTS3 regions of Slovakia
download at 📥 doi:10.5281/zenodo.6165135
suggested citation: Páleník, M. (2024). LAU1 dataset [Data set]. IZ Bratislava. https://doi.org/10.5281/zenodo.6165135
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.
This study was deposited in 2008, as a result of the move from seasonal to calendar quarters for the QLFS, and the reweighting process to 2007-2008 population figures. It combines data from previously-available QLFS seasonal two-quarter longitudinal datasets. The depositor has advised that small revisions to the data may have been made during this process, but they should not be significant.Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
This data set shows unemployment rate by urban and rural strata for all states in Malaysia. The statistics is derived from Labour Force Survey (LFS) which is conducted every month using household approach and refers to those between the working age of 15-64 years old.
Unemployment rate is the proportion of unemployed population to the total population in the labour force, which measures the percentage of unemployed population in the labour force.
W.P. Labuan is gazzeted as a Federal Territory in 1984 while W.P. Putrajaya is gazzeted as a Federal Territory in 2001. The statistics for W.P. Putrajaya for 2001-2010 is treated as part of Selangor. Statistics for W.P. Putrajaya is available separately since 2011 onwards.
LFS was not conducted during the years 1991 and 1994.
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