14 datasets found
  1. COVID-19 in Korea dataset

    • kaggle.com
    Updated Dec 28, 2020
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    Sean Hong (2020). COVID-19 in Korea dataset [Dataset]. https://www.kaggle.com/hongsean/covid19-in-korea-dataset/notebooks
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Dec 28, 2020
    Dataset provided by
    Kagglehttp://kaggle.com/
    Authors
    Sean Hong
    License

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

    Area covered
    South Korea
    Description

    Context

    • A new coronavirus designated 2019-nCoV was first identified in Wuhan, the capital of China's Hubei province
    • People developed pneumonia without a clear cause and for which existing vaccines or treatments were not effective
    • The virus has shown evidence of human-to-human transmission
    • Korea has defended well against coronavirus until summer, but it increased many confirmed cases from fall
    • As of 24th Dec. approximately 53K cases have been confirmed, and daily around 1K cases are getting confirmed
    • This datasets are prepared to cheer Korea up fighting against coronavirus

    https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F4837224%2Ff829b8bd45aacf4c63b17e0116cb52c9%2Fcover_photo.PNG?generation=1608792447857317&alt=media" alt="">

    Content

    • 3 files attached which are 1) COVID Korea Status 2) COVID Korea Demo 3) COVID Korea Geo

    • 1) COVID Korea Status : General daily update . STATE_DT : standard date . STATE_TIME : standard time . DECIDE_CNT : confirmed cases . CLEAR_CNT : clear cases after hospitalization . EXAM_CNT : examination cases . DEATH_CNT : death counts . CARE_CNT : counts on care . RESUTL_NEG_CNT : negative results after examination . ACC_EXAM_CNT : accumulative examination counts . ACC_EXAM_COMP_CNT: accumulative examination completes count . ACC_DEF_RATE : accumulative confirmed rate . CREATE_DT : posted date and time . UPDATE_DT : updated date and time

    • 2) COVID Korea Demo : Updates with demographic information . GUBUN : classified by gender and age . CONF_CASE : confirmed cases . CONF_CASE_RATE : confirmed case rate . DEATH : death counts . DEATH_RATE : death rate . CRITICAL_RATE : critical rate . CREATE_DT : created date and time . UPDATE_DT : updated date and time

    • 3) COVID Korea Geo : Updates with geographic information
      . CREATE_DT : created date and time
      . DEATH_CNT : death counts
      . GUBUN : city name
      . GUBUN_CN : city name in Chinese
      . GUBUN_EN : city name in English
      . INC_DEC : increase/decrease vs. past day
      . ISOL_CLEAR_CNT : clear counts from isolation
      . QUR_RATE : confirmed rate per 100K people
      . STD_DAY : standard day
      . UPDATE_DT : updated date and time
      . DEF_CNT : confirmed cases
      . ISOL_ING_CNT : isolated cases
      . OVER_FLOW_CNT : confirmed cases from foreign countries
      . LOCAL_OCC_CNT : domestic confirmed cases

    Acknowledgements

    If these are useful, I will frequently update. Thanks.

  2. Coronavirus - Brazil

    • kaggle.com
    Updated May 24, 2021
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    Raphael Fontes (2021). Coronavirus - Brazil [Dataset]. https://www.kaggle.com/unanimad/corona-virus-brazil/metadata
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    May 24, 2021
    Dataset provided by
    Kaggle
    Authors
    Raphael Fontes
    License

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

    Area covered
    Brazil
    Description

    Please, If you enjoyed this dataset, don't forget to upvote it.

    Content

    From Novel Corona Virus 2019 Dataset:

    2019 Novel Coronavirus (2019-nCoV) is a virus (more specifically, a coronavirus) identified as the cause of an outbreak of respiratory illness first detected in Wuhan, China. Early on, many of the patients in the outbreak in Wuhan, China reportedly had some link to a large seafood and animal market, suggesting animal-to-person spread. However, a growing number of patients reportedly have not had exposure to animal markets, indicating person-to-person spread is occurring. At this time, it’s unclear how easily or sustainably this virus is spreading between people - CDC

    This dataset has information on the number of cases in Brazil. Please note that this is a time series data and so the number of cases on any given day is a cumulative number.

    The data is available from Jan/30/2020, when the first suspect case appeared in Brazil.

    Acknowledgements

    1. Avisos/Advertising - Please, before start working with this data, take a break to read this discussion.
    2. Plataforma COVID Brazil - Public platform to share informations about the COVID-19 cases in Brazil.

    Country level datasets

    If you are interested in know about another country, please follow these Kaggle datasets:

    Inspiration

    1. Changes in number of cases over time
    2. Change in cases over time at state level
  3. T

    South Korean Won Data

    • tradingeconomics.com
    • pl.tradingeconomics.com
    • +12more
    csv, excel, json, xml
    Updated Jun 9, 2025
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    TRADING ECONOMICS (2025). South Korean Won Data [Dataset]. https://tradingeconomics.com/south-korea/currency
    Explore at:
    xml, json, excel, csvAvailable download formats
    Dataset updated
    Jun 9, 2025
    Dataset authored and provided by
    TRADING ECONOMICS
    License

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

    Time period covered
    May 20, 1983 - Jun 9, 2025
    Area covered
    South Korea
    Description

    The USD/KRW exchange rate fell to 1,355.5900 on June 9, 2025, down 0.34% from the previous session. Over the past month, the South Korean Won has strengthened 4.34%, and is up by 1.39% over the last 12 months. South Korean Won - values, historical data, forecasts and news - updated on June of 2025.

  4. Share of the GDP of the tourism sector in South Korea 2013-2028

    • statista.com
    • ai-chatbox.pro
    Updated Aug 6, 2024
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    Statista Research Department (2024). Share of the GDP of the tourism sector in South Korea 2013-2028 [Dataset]. https://www.statista.com/topics/4810/travel-and-tourism-industry-in-south-korea/
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    Dataset updated
    Aug 6, 2024
    Dataset provided by
    Statistahttp://statista.com/
    Authors
    Statista Research Department
    Area covered
    South Korea
    Description

    The tourism sector GDP share in South Korea was forecast to continuously increase between 2023 and 2028 by in total 0.6 percentage points. The share is estimated to amount to 2.71 percent in 2028. While the share was forecast to increase significant in the next years, the increase will slow down in the future.Depited is the economic contribution of the tourism sector in relation to the gross domestic product of the country or region at hand.The forecast has been adjusted for the expected impact of COVID-19.The shown data are an excerpt of Statista's Key Market Indicators (KMI). The KMI are a collection of primary and secondary indicators on the macro-economic, demographic and technological environment in more than 150 countries and regions worldwide. All input data are sourced from international institutions, national statistical offices, and trade associations. All data has been are processed to generate comparable datasets (see supplementary notes under details for more information).Find more key insights for the tourism sector GDP share in countries like Japan and China.

  5. S

    South Korea KR: International Tourism: Number of Arrivals

    • ceicdata.com
    Updated Dec 15, 2007
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    CEICdata.com (2007). South Korea KR: International Tourism: Number of Arrivals [Dataset]. https://www.ceicdata.com/en/korea/tourism-statistics/kr-international-tourism-number-of-arrivals
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    Dataset updated
    Dec 15, 2007
    Dataset provided by
    CEICdata.com
    License

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

    Time period covered
    Dec 1, 2005 - Dec 1, 2016
    Area covered
    South Korea
    Variables measured
    Tourism Statistics
    Description

    Korea International Tourism: Number of Arrivals data was reported at 17,242,000.000 Person in 2016. This records an increase from the previous number of 13,232,000.000 Person for 2015. Korea International Tourism: Number of Arrivals data is updated yearly, averaging 6,089,000.000 Person from Dec 1995 (Median) to 2016, with 22 observations. The data reached an all-time high of 17,242,000.000 Person in 2016 and a record low of 3,684,000.000 Person in 1996. Korea International Tourism: Number of Arrivals data remains active status in CEIC and is reported by World Bank. The data is categorized under Global Database’s South Korea – Table KR.World Bank.WDI: Tourism Statistics. International inbound tourists (overnight visitors) are the number of tourists who travel to a country other than that in which they have their usual residence, but outside their usual environment, for a period not exceeding 12 months and whose main purpose in visiting is other than an activity remunerated from within the country visited. When data on number of tourists are not available, the number of visitors, which includes tourists, same-day visitors, cruise passengers, and crew members, is shown instead. Sources and collection methods for arrivals differ across countries. In some cases data are from border statistics (police, immigration, and the like) and supplemented by border surveys. In other cases data are from tourism accommodation establishments. For some countries number of arrivals is limited to arrivals by air and for others to arrivals staying in hotels. Some countries include arrivals of nationals residing abroad while others do not. Caution should thus be used in comparing arrivals across countries. The data on inbound tourists refer to the number of arrivals, not to the number of people traveling. Thus a person who makes several trips to a country during a given period is counted each time as a new arrival.; ; World Tourism Organization, Yearbook of Tourism Statistics, Compendium of Tourism Statistics and data files.; Gap-filled total;

  6. T

    South Korea Stock Market Data

    • tradingeconomics.com
    • tr.tradingeconomics.com
    • +14more
    csv, excel, json, xml
    Updated Jun 9, 2025
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    TRADING ECONOMICS (2025). South Korea Stock Market Data [Dataset]. https://tradingeconomics.com/south-korea/stock-market
    Explore at:
    csv, xml, excel, jsonAvailable download formats
    Dataset updated
    Jun 9, 2025
    Dataset authored and provided by
    TRADING ECONOMICS
    License

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

    Time period covered
    May 3, 1983 - Jun 9, 2025
    Area covered
    South Korea
    Description

    South Korea's main stock market index, the KOSPI, rose to 2856 points on June 9, 2025, gaining 1.55% from the previous session. Over the past month, the index has climbed 9.53% and is up 5.72% compared to the same time last year, according to trading on a contract for difference (CFD) that tracks this benchmark index from South Korea. South Korea Stock Market - values, historical data, forecasts and news - updated on June of 2025.

  7. Z

    Counts of COVID-19 reported in KOREA (DEMOCRATIC PEOPLE'S REPUBLIC OF):...

    • data.niaid.nih.gov
    Updated Jun 3, 2024
    + more versions
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    MIDAS Coordination Center (2024). Counts of COVID-19 reported in KOREA (DEMOCRATIC PEOPLE'S REPUBLIC OF): 2020-2021 [Dataset]. https://data.niaid.nih.gov/resources?id=zenodo_11451316
    Explore at:
    Dataset updated
    Jun 3, 2024
    Dataset authored and provided by
    MIDAS Coordination Center
    License

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

    Description

    Project Tycho datasets contain case counts for reported disease conditions for countries around the world. The Project Tycho data curation team extracts these case counts from various reputable sources, typically from national or international health authorities, such as the US Centers for Disease Control or the World Health Organization. These original data sources include both open- and restricted-access sources. For restricted-access sources, the Project Tycho team has obtained permission for redistribution from data contributors. All datasets contain case count data that are identical to counts published in the original source and no counts have been modified in any way by the Project Tycho team, except for aggregation of individual case count data into daily counts when that was the best data available for a disease and location. The Project Tycho team has pre-processed datasets by adding new variables, such as standard disease and location identifiers, that improve data interpretability. We also formatted the data into a standard data format. All geographic locations at the country and admin1 level have been represented at the same geographic level as in the data source, provided an ISO code or codes could be identified, unless the data source specifies that the location is listed at an inaccurate geographical level. For more information about decisions made by the curation team, recommended data processing steps, and the data sources used, please see the README that is included in the dataset download ZIP file.

  8. International tourism receipts in South Korea 2014-2029

    • statista.com
    • ai-chatbox.pro
    Updated Aug 6, 2024
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    Statista Research Department (2024). International tourism receipts in South Korea 2014-2029 [Dataset]. https://www.statista.com/topics/4810/travel-and-tourism-industry-in-south-korea/
    Explore at:
    Dataset updated
    Aug 6, 2024
    Dataset provided by
    Statistahttp://statista.com/
    Authors
    Statista Research Department
    Area covered
    South Korea
    Description

    The international tourism receipts in South Korea were forecast to continuously increase between 2024 and 2029 by in total 2.7 trillion U.S. dollars (+13.11 percent). According to this forecast, in 2029, the tourism receipts will have increased for the ninth consecutive year to 23.1 trillion U.S. dollars. Receipts denote expenditures by inbound tourists from other countries. Domestic tourism expenditures are not included. The forecast has been adjusted for the expected impact of COVID-19. The shown data are an excerpt of Statista's Key Market Indicators (KMI). The KMI are a collection of primary and secondary indicators on the macro-economic, demographic and technological environment in more than 150 countries and regions worldwide. All input data are sourced from international institutions, national statistical offices, and trade associations. All data has been are processed to generate comparable datasets (see supplementary notes under details for more information).Find more key insights for the international tourism receipts in countries like China and Japan.

  9. d

    Korea, Rep. - Global Financial Inclusion (Global Findex) Database 2014 -...

    • waterdata3.staging.derilinx.com
    Updated Mar 16, 2020
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    (2020). Korea, Rep. - Global Financial Inclusion (Global Findex) Database 2014 - Dataset - waterdata [Dataset]. https://waterdata3.staging.derilinx.com/dataset/korea-rep-global-financial-inclusion-global-findex-database-2014
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    Dataset updated
    Mar 16, 2020
    License

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

    Description

    Financial inclusion is critical in reducing poverty and achieving inclusive economic growth. When people can participate in the financial system, they are better able to start and expand businesses, invest in their children’s education, and absorb financial shocks. Yet prior to 2011, little was known about the extent of financial inclusion and the degree to which such groups as the poor, women, and rural residents were excluded from formal financial systems. By collecting detailed indicators about how adults around the world manage their day-to-day finances, the Global Findex allows policy makers, researchers, businesses, and development practitioners to track how the use of financial services has changed over time. The database can also be used to identify gaps in access to the formal financial system and design policies to expand financial inclusion.

  10. w

    Global Financial Inclusion (Global Findex) Database 2021 - Korea, Rep.

    • microdata.worldbank.org
    • catalog.ihsn.org
    • +1more
    Updated Dec 16, 2022
    + more versions
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    Development Research Group, Finance and Private Sector Development Unit (2022). Global Financial Inclusion (Global Findex) Database 2021 - Korea, Rep. [Dataset]. https://microdata.worldbank.org/index.php/catalog/4665
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    Dataset updated
    Dec 16, 2022
    Dataset authored and provided by
    Development Research Group, Finance and Private Sector Development Unit
    Time period covered
    2021
    Area covered
    Rep., Korea
    Description

    Abstract

    The fourth edition of the Global Findex offers a lens into how people accessed and used financial services during the COVID-19 pandemic, when mobility restrictions and health policies drove increased demand for digital services of all kinds.

    The Global Findex is the world's most comprehensive database on financial inclusion. It is also the only global demand-side data source allowing for global and regional cross-country analysis to provide a rigorous and multidimensional picture of how adults save, borrow, make payments, and manage financial risks. Global Findex 2021 data were collected from national representative surveys of about 128,000 adults in more than 120 economies. The latest edition follows the 2011, 2014, and 2017 editions, and it includes a number of new series measuring financial health and resilience and contains more granular data on digital payment adoption, including merchant and government payments.

    The Global Findex is an indispensable resource for financial service practitioners, policy makers, researchers, and development professionals.

    Geographic coverage

    National coverage

    Analysis unit

    Individual

    Kind of data

    Observation data/ratings [obs]

    Sampling procedure

    In most developing economies, Global Findex data have traditionally been collected through face-to-face interviews. Surveys are conducted face-to-face in economies where telephone coverage represents less than 80 percent of the population or where in-person surveying is the customary methodology. However, because of ongoing COVID-19 related mobility restrictions, face-to-face interviewing was not possible in some of these economies in 2021. Phone-based surveys were therefore conducted in 67 economies that had been surveyed face-to-face in 2017. These 67 economies were selected for inclusion based on population size, phone penetration rate, COVID-19 infection rates, and the feasibility of executing phone-based methods where Gallup would otherwise conduct face-to-face data collection, while complying with all government-issued guidance throughout the interviewing process. Gallup takes both mobile phone and landline ownership into consideration. According to Gallup World Poll 2019 data, when face-to-face surveys were last carried out in these economies, at least 80 percent of adults in almost all of them reported mobile phone ownership. All samples are probability-based and nationally representative of the resident adult population. Phone surveys were not a viable option in 17 economies that had been part of previous Global Findex surveys, however, because of low mobile phone ownership and surveying restrictions. Data for these economies will be collected in 2022 and released in 2023.

    In economies where face-to-face surveys are conducted, the first stage of sampling is the identification of primary sampling units. These units are stratified by population size, geography, or both, and clustering is achieved through one or more stages of sampling. Where population information is available, sample selection is based on probabilities proportional to population size; otherwise, simple random sampling is used. Random route procedures are used to select sampled households. Unless an outright refusal occurs, interviewers make up to three attempts to survey the sampled household. To increase the probability of contact and completion, attempts are made at different times of the day and, where possible, on different days. If an interview cannot be obtained at the initial sampled household, a simple substitution method is used. Respondents are randomly selected within the selected households. Each eligible household member is listed, and the hand-held survey device randomly selects the household member to be interviewed. For paper surveys, the Kish grid method is used to select the respondent. In economies where cultural restrictions dictate gender matching, respondents are randomly selected from among all eligible adults of the interviewer's gender.

    In traditionally phone-based economies, respondent selection follows the same procedure as in previous years, using random digit dialing or a nationally representative list of phone numbers. In most economies where mobile phone and landline penetration is high, a dual sampling frame is used.

    The same respondent selection procedure is applied to the new phone-based economies. Dual frame (landline and mobile phone) random digital dialing is used where landline presence and use are 20 percent or higher based on historical Gallup estimates. Mobile phone random digital dialing is used in economies with limited to no landline presence (less than 20 percent).

    For landline respondents in economies where mobile phone or landline penetration is 80 percent or higher, random selection of respondents is achieved by using either the latest birthday or household enumeration method. For mobile phone respondents in these economies or in economies where mobile phone or landline penetration is less than 80 percent, no further selection is performed. At least three attempts are made to reach a person in each household, spread over different days and times of day.

    Sample size for Korea, Rep. is 1011.

    Mode of data collection

    Landline and mobile telephone

    Research instrument

    Questionnaires are available on the website.

    Sampling error estimates

    Estimates of standard errors (which account for sampling error) vary by country and indicator. For country-specific margins of error, please refer to the Methodology section and corresponding table in Demirgüç-Kunt, Asli, Leora Klapper, Dorothe Singer, Saniya Ansar. 2022. The Global Findex Database 2021: Financial Inclusion, Digital Payments, and Resilience in the Age of COVID-19. Washington, DC: World Bank.

  11. w

    Global Financial Inclusion (Global Findex) Database 2017 - Korea, Rep.

    • microdata.worldbank.org
    • catalog.ihsn.org
    Updated Oct 31, 2018
    + more versions
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    Development Research Group, Finance and Private Sector Development Unit (2018). Global Financial Inclusion (Global Findex) Database 2017 - Korea, Rep. [Dataset]. https://microdata.worldbank.org/index.php/catalog/3374
    Explore at:
    Dataset updated
    Oct 31, 2018
    Dataset authored and provided by
    Development Research Group, Finance and Private Sector Development Unit
    Time period covered
    2017
    Area covered
    Korea, Rep.
    Description

    Abstract

    Financial inclusion is critical in reducing poverty and achieving inclusive economic growth. When people can participate in the financial system, they are better able to start and expand businesses, invest in their children’s education, and absorb financial shocks. Yet prior to 2011, little was known about the extent of financial inclusion and the degree to which such groups as the poor, women, and rural residents were excluded from formal financial systems.

    By collecting detailed indicators about how adults around the world manage their day-to-day finances, the Global Findex allows policy makers, researchers, businesses, and development practitioners to track how the use of financial services has changed over time. The database can also be used to identify gaps in access to the formal financial system and design policies to expand financial inclusion.

    Geographic coverage

    National coverage

    Universe

    The target population is the civilian, non-institutionalized population 15 years and above.

    Kind of data

    Observation data/ratings [obs]

    Sampling procedure

    The indicators in the 2017 Global Findex database are drawn from survey data covering almost 150,000 people in 144 economies-representing more than 97 percent of the world’s population (see Table A.1 of the Global Findex Database 2017 Report for a list of the economies included). The survey was carried out over the 2017 calendar year by Gallup, Inc., as part of its Gallup World Poll, which since 2005 has annually conducted surveys of approximately 1,000 people in each of more than 160 economies and in over 150 languages, using randomly selected, nationally representative samples. The target population is the entire civilian, noninstitutionalized population age 15 and above. Interview procedure Surveys are conducted face to face in economies where telephone coverage represents less than 80 percent of the population or where this is the customary methodology. In most economies the fieldwork is completed in two to four weeks.

    In economies where face-to-face surveys are conducted, the first stage of sampling is the identification of primary sampling units. These units are stratified by population size, geography, or both, and clustering is achieved through one or more stages of sampling. Where population information is available, sample selection is based on probabilities proportional to population size; otherwise, simple random sampling is used. Random route procedures are used to select sampled households. Unless an outright refusal occurs, interviewers make up to three attempts to survey the sampled household. To increase the probability of contact and completion, attempts are made at different times of the day and, where possible, on different days. If an interview cannot be obtained at the initial sampled household, a simple substitution method is used.

    Respondents are randomly selected within the selected households. Each eligible household member is listed and the handheld survey device randomly selects the household member to be interviewed. For paper surveys, the Kish grid method is used to select the respondent. In economies where cultural restrictions dictate gender matching, respondents are randomly selected from among all eligible adults of the interviewer’s gender.

    In economies where telephone interviewing is employed, random digit dialing or a nationally representative list of phone numbers is used. In most economies where cell phone penetration is high, a dual sampling frame is used. Random selection of respondents is achieved by using either the latest birthday or household enumeration method. At least three attempts are made to reach a person in each household, spread over different days and times of day.

    The sample size was 1000.

    Mode of data collection

    Other [oth]

    Research instrument

    The questionnaire was designed by the World Bank, in conjunction with a Technical Advisory Board composed of leading academics, practitioners, and policy makers in the field of financial inclusion. The Bill and Melinda Gates Foundation and Gallup Inc. also provided valuable input. The questionnaire was piloted in multiple countries, using focus groups, cognitive interviews, and field testing. The questionnaire is available in more than 140 languages upon request.

    Questions on cash on delivery, saving using an informal savings club or person outside the family, domestic remittances, and agricultural payments are only asked in developing economies and few other selected countries. The question on mobile money accounts was only asked in economies that were part of the Mobile Money for the Unbanked (MMU) database of the GSMA at the time the interviews were being held.

    Sampling error estimates

    Estimates of standard errors (which account for sampling error) vary by country and indicator. For country-specific margins of error, please refer to the Methodology section and corresponding table in Demirgüç-Kunt, Asli, Leora Klapper, Dorothe Singer, Saniya Ansar, and Jake Hess. 2018. The Global Findex Database 2017: Measuring Financial Inclusion and the Fintech Revolution. Washington, DC: World Bank

  12. i

    Global Financial Inclusion (Global Findex) Database 2011 - Korea, Rep.

    • dev.ihsn.org
    • datacatalog.ihsn.org
    • +2more
    Updated Apr 25, 2019
    + more versions
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    Development Research Group, Finance and Private Sector Development Unit (2019). Global Financial Inclusion (Global Findex) Database 2011 - Korea, Rep. [Dataset]. https://dev.ihsn.org/nada//catalog/73550
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    Dataset updated
    Apr 25, 2019
    Dataset authored and provided by
    Development Research Group, Finance and Private Sector Development Unit
    Time period covered
    2011
    Area covered
    Korea, Rep.
    Description

    Abstract

    Well-functioning financial systems serve a vital purpose, offering savings, credit, payment, and risk management products to people with a wide range of needs. Yet until now little had been known about the global reach of the financial sector - the extent of financial inclusion and the degree to which such groups as the poor, women, and youth are excluded from formal financial systems. Systematic indicators of the use of different financial services had been lacking for most economies.

    The Global Financial Inclusion (Global Findex) database provides such indicators. This database contains the first round of Global Findex indicators, measuring how adults in more than 140 economies save, borrow, make payments, and manage risk. The data set can be used to track the effects of financial inclusion policies globally and develop a deeper and more nuanced understanding of how people around the world manage their day-to-day finances. By making it possible to identify segments of the population excluded from the formal financial sector, the data can help policy makers prioritize reforms and design new policies.

    Geographic coverage

    National Coverage.

    Analysis unit

    Individual

    Universe

    The target population is the civilian, non-institutionalized population 15 years and above. The sample is nationally representative.

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    The Global Findex indicators are drawn from survey data collected by Gallup, Inc. over the 2011 calendar year, covering more than 150,000 adults in 148 economies and representing about 97 percent of the world's population. Since 2005, Gallup has surveyed adults annually around the world, using a uniform methodology and randomly selected, nationally representative samples. The second round of Global Findex indicators was collected in 2014 and is forthcoming in 2015. The set of indicators will be collected again in 2017.

    Surveys were conducted face-to-face in economies where landline telephone penetration is less than 80 percent, or where face-to-face interviewing is customary. The first stage of sampling is the identification of primary sampling units, consisting of clusters of households. The primary sampling units are stratified by population size, geography, or both, and clustering is achieved through one or more stages of sampling. Where population information is available, sample selection is based on probabilities proportional to population size; otherwise, simple random sampling is used. Random route procedures are used to select sampled households. Unless an outright refusal occurs, interviewers make up to three attempts to survey the sampled household. If an interview cannot be obtained at the initial sampled household, a simple substitution method is used. Respondents are randomly selected within the selected households by means of the Kish grid.

    Surveys were conducted by telephone in economies where landline telephone penetration is over 80 percent. The telephone surveys were conducted using random digit dialing or a nationally representative list of phone numbers. In selected countries where cell phone penetration is high, a dual sampling frame is used. Random respondent selection is achieved by using either the latest birthday or Kish grid method. At least three attempts are made to teach a person in each household, spread over different days and times of year.

    The sample size in Korea, Rep. was 1,001 individuals.

    Mode of data collection

    Landline and cellular telephone

    Research instrument

    The questionnaire was designed by the World Bank, in conjunction with a Technical Advisory Board composed of leading academics, practitioners, and policy makers in the field of financial inclusion. The Bill and Melinda Gates Foundation and Gallup, Inc. also provided valuable input. The questionnaire was piloted in over 20 countries using focus groups, cognitive interviews, and field testing. The questionnaire is available in 142 languages upon request.

    Questions on insurance, mobile payments, and loan purposes were asked only in developing economies. The indicators on awareness and use of microfinance insitutions (MFIs) are not included in the public dataset. However, adults who report saving at an MFI are considered to have an account; this is reflected in the composite account indicator.

    Sampling error estimates

    Estimates of standard errors (which account for sampling error) vary by country and indicator. For country- and indicator-specific standard errors, refer to the Annex and Country Table in Demirguc-Kunt, Asli and L. Klapper. 2012. "Measuring Financial Inclusion: The Global Findex." Policy Research Working Paper 6025, World Bank, Washington, D.C.

  13. p

    CSES Module 4 Third Advance Release

    • pollux-fid.de
    Updated 2016
    + more versions
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    Rachel Gibson; Clive Bean; Juliet Pietsch; Ian McAllister; Wolfgang C. Müller; Sylvia Kritzinger; Nicolas Sauger; Klaus Schönbach; Christof Wolf; Sigrid Roßteutscher; Bernhard Wessels; Hans Rattinger; Rüdiger Schmitt-Beck; Theodore Chadjipadelis; Ioannis Andreadis; Michael Marsh; Eva H. Onnudottir; Olafur P. Hardarson; Satoko Yasuno; Yukio Maeda; Masahiro Yamada; Tetsuro Kobayashi; Kazunori Inamasu; Ken'ichi Ikeda; Naoko Taniguchi; Ulises Beltrán; Rosario Aguilar; Pavle Gegaj; Olivera Komar; Milo Bešic; Jack Vowles; Radosław Markowski; Michal Kotnarowski; Paweł Grzelak; Mikołaj Cześnik; Bojan Todosijevic; Zoran Pavlovic; Dave A. Howell; Altin Ilirjani; Georg Lutz; Chi Huang; Thawilwadee Bureekul; Robert B. Albitton; Ratchawadee Sangmahamad; Darrell Donakowski; Vincent Hutchings; Simon Jackman; Gary M. Segura; Rachel Meneguello; Alina Dobreva; Patrick Fournier; Fred Cutler; Stuart Soroka; Dietlind Stolle; Lukas Linek; Michal Shamir; Bernt Aardal; Johannes Bergh; Pedro Magalhaes; Marina Costa Lobo; Joao Tiago Gaspar; Janez Stebe; Nam Young Lee; Wook Kim; Henrik Oscarsson; Ali Carkoglu; S. Erden Aytac (2016). CSES Module 4 Third Advance Release [Dataset]. http://doi.org/10.7804/cses.module4.2016-06-22
    Explore at:
    Dataset updated
    2016
    Dataset provided by
    Brazil: IBOPE Inteligência, São Paulo
    Israel: The B.I. and Lucille Cohen institute for Public Opinion Research, Tel Aviv
    Portugal: GfK Portugal – Metris, Lisbon
    New Zealand: Centre for Methods and Policy Applications in the Social Sciences (COMPASS), University of Auckland, Auckland
    Greece: Artistotle University of Thessaloniki Laboratory of Applied Political Research, To The Point Research Consulting Communication S.A., Thessaloniki
    Poland: Public Opinion Research Center (Centrum Badania Opinii Społecznej, CBOS), Warsaw
    Poland: Public Opinion Research Center (Centrum Badania Opinii Społecznej,CBOS), Warsaw
    Canada: Institute for Social Research (Canada outside Quebec), Toronto & Jolicoeur & Associés (Quebec), Montreal
    The Comparative Study of Electoral Systems
    Switzerland: DemoSCOPE Research & Marketing, Adligenswil
    Sweden: Statistics Sweden, SCB, Örebro
    Japan: Nippon Research Center (Member of Gallup International Association), Tokyo
    Bulgaria: TNS BBSS SEE, Sofia
    Australia: Survey Research Centre Pty Ltd, Melbourne
    Taiwan: Department of Political Science, National Taiwan University, Taipei
    Montenegro: De Facto Consultancy, Podgorica
    South Korea: Korean Social Science Data Center, Seoul
    Thailand: King Prajadhipok's Institute, Bangkok
    Ireland: RED C Research & Marketing Ltd, Dublin
    Austria: Jaksch & Partner, Linz
    Slovenia: CJMMK (Public Opinion and Mass Communication Research Centre), Ljubljana
    Turkey: Frekans Araştırma, Istanbul
    Germany: MARPLAN Media- und Sozialforschungsgesellschaft mbH, Frankfurt am Main
    United States: Abt SRBI, New York
    Norway: Statistics Norway, Oslo
    Czech Republic: CVVM (Center for public opinion research) at the Institute of Sociology, Czech Academy of Sciences, Prague
    France: TNS-Sofres, Montrouge
    Serbia: Ipsos Strategic Marketing, Belgrad
    Mexico: CAMPO, S. C., Puebla
    Iceland: Social Science Research Institute of the University of Iceland, Reykjavík
    Authors
    Rachel Gibson; Clive Bean; Juliet Pietsch; Ian McAllister; Wolfgang C. Müller; Sylvia Kritzinger; Nicolas Sauger; Klaus Schönbach; Christof Wolf; Sigrid Roßteutscher; Bernhard Wessels; Hans Rattinger; Rüdiger Schmitt-Beck; Theodore Chadjipadelis; Ioannis Andreadis; Michael Marsh; Eva H. Onnudottir; Olafur P. Hardarson; Satoko Yasuno; Yukio Maeda; Masahiro Yamada; Tetsuro Kobayashi; Kazunori Inamasu; Ken'ichi Ikeda; Naoko Taniguchi; Ulises Beltrán; Rosario Aguilar; Pavle Gegaj; Olivera Komar; Milo Bešic; Jack Vowles; Radosław Markowski; Michal Kotnarowski; Paweł Grzelak; Mikołaj Cześnik; Bojan Todosijevic; Zoran Pavlovic; Dave A. Howell; Altin Ilirjani; Georg Lutz; Chi Huang; Thawilwadee Bureekul; Robert B. Albitton; Ratchawadee Sangmahamad; Darrell Donakowski; Vincent Hutchings; Simon Jackman; Gary M. Segura; Rachel Meneguello; Alina Dobreva; Patrick Fournier; Fred Cutler; Stuart Soroka; Dietlind Stolle; Lukas Linek; Michal Shamir; Bernt Aardal; Johannes Bergh; Pedro Magalhaes; Marina Costa Lobo; Joao Tiago Gaspar; Janez Stebe; Nam Young Lee; Wook Kim; Henrik Oscarsson; Ali Carkoglu; S. Erden Aytac
    Description

    The module was administered as a post-election interview. The resulting data are provided along with voting, demographic, district and macro variables in a single dataset. CSES Variable List The list of variables is being provided on the CSES Website to help in understanding what content is available from CSES, and to compare the content available in each module. Themes: MICRO-LEVEL DATA: Identification and study administration variables: weighting factors; election type; date of election 1st and 2nd round; study timing (post-election study, pre-election and post-election study, between rounds of majoritarian election); mode of interview; gender of interviewer; date questionnaire administered; primary electoral district of respondent; number of days the interview was conducted after the election; language of questionnaire. Demography: year and month of birth; gender; education; marital status; union membership; union membership of others in household; business association membership, farmers´ association membership; professional association membership; current employment status; main occupation; socio economic status; employment type - public or private; industrial sector; current employment status, occupation, socio economic status, employment type - public or private, and industrial sector of spouse; household income; number of persons in household; number of children in household under the age of 18; number of children in household under the age of 6; attendance at religious services; religiosity; religious denomination; language usually spoken at home; region of residence; race; ethnicity; rural or urban residence; primary electoral district; country of birth; year arrived in current country. Survey variables: perception of public expenditure on health, education, unemployment benefits, defense, old-age pensions, business and industry, police and law enforcement, welfare benefits; perception of improving individual standard of living, state of economy, government's action on income inequality; respondent cast a ballot at the current and the previous election; vote choice (presidential, lower house and upper house elections) at the current and the previous election; respondent cast candidate preference vote at the current and the previous election; difference who is in power and who people vote for; sympathy scale for selected parties and political leaders; assessment of parties on the left-right-scale and/or an alternative scale; self-assessment on a left-right-scale and an optional scale; satisfaction with democracy; party identification; intensity of party identification, institutional and personal contact in the electoral campaigning, in person, by mail, phone, text message, email or social networks, institutional contact by whom; political information questions; expected development of household income in the next twelve month; ownership of residence, business or property or farm or livestock, stocks or bonds, savings; likelihood to find another job within the next twelve month; spouse likelihood to find another job within the next twelve month. DISTRICT-LEVEL DATA: number of seats contested in electoral district; number of candidates; number of party lists; percent vote of different parties; official voter turnout in electoral district. MACRO-LEVEL DATA: election outcomes by parties in current (lower house/upper house) legislative election; percent of seats in lower house received by parties in current lower house/upper house election; percent of seats in upper house received by parties in current lower house/upper house election; percent of votes received by presidential candidate of parties in current elections; electoral turnout; party of the president and the prime minister before and after the election; number of portfolios held by each party in cabinet, prior to and after the most recent election; size of the cabinet after the most recent election; number of parties participating in election; ideological families of parties; left-right position of parties assigned by experts and alternative dimensions; most salient factors in the election; fairness of the election; formal complaints against national level results; election irregularities reported; scheduled and held date of election; irregularities of election date; extent of election violence and post-election violence; geographic concentration of violence; post-election protest; electoral alliances permitted during the election campaign; existing electoral alliances; requirements for joint party lists; possibility of apparentement and types of apparentement agreements; multi-party endorsements on ballot; votes cast; voting procedure; voting rounds; party lists close, open, or flexible; transferable votes; cumulated votes if more than one can be cast; compulsory voting; party threshold; unit for the threshold; freedom house rating; democracy-autocracy polity IV rating; age of the current regime; regime: type of executive; number of months since last lower house and last presidential election; electoral formula for presidential elections; electoral formula in all electoral tiers (majoritarian, proportional or mixed); for lower and upper houses was coded: number of electoral segments; linked electoral segments; dependent formulae in mixed systems; subtypes of mixed electoral systems; district magnitude (number of members elected from each district); number of secondary and tertiary electoral districts; fused vote; size of the lower house; GDP growth (annual percent); GDP per capita; inflation, GDP Deflator (annual percent); Human development index; total population; total unemployment; TI corruption perception index; international migrant stock and net migration rate; general government final consumption expenditure; public spending on education; health expenditure; military expenditure; central government debt; Gini index; internet users per 100 inhabitants; mobile phone subscriptions per 100 inhabitants; fixed telephone lines per 100 inhabitants; daily newspapers; constitutional federal structure; number of legislative chambers; electoral results data available; effective number of electoral and parliamentary parties.

  14. Global retail e-commerce sales 2022-2028

    • statista.com
    Updated Apr 22, 2025
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    Statista (2025). Global retail e-commerce sales 2022-2028 [Dataset]. https://www.statista.com/statistics/379046/worldwide-retail-e-commerce-sales/
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    Dataset updated
    Apr 22, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Feb 2025
    Area covered
    Worldwide
    Description

    In 2024, global retail e-commerce sales reached an estimated six trillion U.S. dollars. Projections indicate a 31 percent growth in this figure over the coming years, with expectations to come close to eight trillion dollars by 2028. World players Among the key players on the world stage, the American marketplace giant Amazon holds the title of the largest e-commerce player globally, with a gross merchandise value of nearly 800 billion U.S. dollars in 2024. Amazon was also the most valuable retail brand globally, followed by mostly American competitors such as Walmart and the Home Depot. Leading e-tailing regions E-commerce is a dormant channel globally, but nowhere has it been as successful as in Asia. In 2024, the e-commerce revenue in that continent alone was measured at nearly two trillion U.S. dollars, outperforming the Americas and Europe. That year, the up-and-coming e-commerce markets also centered around Asia. The Philippines and India stood out as the swiftest-growing e-commerce markets based on online sales, anticipating a growth rate surpassing 20 percent.

  15. Not seeing a result you expected?
    Learn how you can add new datasets to our index.

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Sean Hong (2020). COVID-19 in Korea dataset [Dataset]. https://www.kaggle.com/hongsean/covid19-in-korea-dataset/notebooks
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COVID-19 in Korea dataset

daily confirmed case with demographic and geographic information

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CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
Dataset updated
Dec 28, 2020
Dataset provided by
Kagglehttp://kaggle.com/
Authors
Sean Hong
License

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

Area covered
South Korea
Description

Context

  • A new coronavirus designated 2019-nCoV was first identified in Wuhan, the capital of China's Hubei province
  • People developed pneumonia without a clear cause and for which existing vaccines or treatments were not effective
  • The virus has shown evidence of human-to-human transmission
  • Korea has defended well against coronavirus until summer, but it increased many confirmed cases from fall
  • As of 24th Dec. approximately 53K cases have been confirmed, and daily around 1K cases are getting confirmed
  • This datasets are prepared to cheer Korea up fighting against coronavirus

https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F4837224%2Ff829b8bd45aacf4c63b17e0116cb52c9%2Fcover_photo.PNG?generation=1608792447857317&alt=media" alt="">

Content

  • 3 files attached which are 1) COVID Korea Status 2) COVID Korea Demo 3) COVID Korea Geo

  • 1) COVID Korea Status : General daily update . STATE_DT : standard date . STATE_TIME : standard time . DECIDE_CNT : confirmed cases . CLEAR_CNT : clear cases after hospitalization . EXAM_CNT : examination cases . DEATH_CNT : death counts . CARE_CNT : counts on care . RESUTL_NEG_CNT : negative results after examination . ACC_EXAM_CNT : accumulative examination counts . ACC_EXAM_COMP_CNT: accumulative examination completes count . ACC_DEF_RATE : accumulative confirmed rate . CREATE_DT : posted date and time . UPDATE_DT : updated date and time

  • 2) COVID Korea Demo : Updates with demographic information . GUBUN : classified by gender and age . CONF_CASE : confirmed cases . CONF_CASE_RATE : confirmed case rate . DEATH : death counts . DEATH_RATE : death rate . CRITICAL_RATE : critical rate . CREATE_DT : created date and time . UPDATE_DT : updated date and time

  • 3) COVID Korea Geo : Updates with geographic information
    . CREATE_DT : created date and time
    . DEATH_CNT : death counts
    . GUBUN : city name
    . GUBUN_CN : city name in Chinese
    . GUBUN_EN : city name in English
    . INC_DEC : increase/decrease vs. past day
    . ISOL_CLEAR_CNT : clear counts from isolation
    . QUR_RATE : confirmed rate per 100K people
    . STD_DAY : standard day
    . UPDATE_DT : updated date and time
    . DEF_CNT : confirmed cases
    . ISOL_ING_CNT : isolated cases
    . OVER_FLOW_CNT : confirmed cases from foreign countries
    . LOCAL_OCC_CNT : domestic confirmed cases

Acknowledgements

If these are useful, I will frequently update. Thanks.

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