100+ datasets found
  1. m

    Panel dataset on Brazilian fuel demand

    • data.mendeley.com
    Updated Oct 7, 2024
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    Sergio Prolo (2024). Panel dataset on Brazilian fuel demand [Dataset]. http://doi.org/10.17632/hzpwbp7j22.1
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    Dataset updated
    Oct 7, 2024
    Authors
    Sergio Prolo
    License

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

    Area covered
    Brazil
    Description

    Summary : Fuel demand is shown to be influenced by fuel prices, people's income and motorization rates. We explore the effects of electric vehicle's rates in gasoline demand using this panel dataset.

    Files : dataset.csv - Panel dimensions are the Brazilian state ( i ) and year ( t ). The other columns are: gasoline sales per capita (ln_Sg_pc), prices of gasoline (ln_Pg) and ethanol (ln_Pe) and their lags, motorization rates of combustion vehicles (ln_Mi_c) and electric vehicles (ln_Mi_e) and GDP per capita (ln_gdp_pc). All variables are all under the natural log function, since we use this to calculate demand elasticities in a regression model.

    adjacency.csv - The adjacency matrix used in interaction with electric vehicles' motorization rates to calculate spatial effects. At first, it follows a binary adjacency formula: for each pair of states i and j, the cell (i, j) is 0 if the states are not adjacent and 1 if they are. Then, each row is normalized to have sum equal to one.

    regression.do - Series of Stata commands used to estimate the regression models of our study. dataset.csv must be imported to work, see comment section.

    dataset_predictions.xlsx - Based on the estimations from Stata, we use this excel file to make average predictions by year and by state. Also, by including years beyond the last panel sample, we also forecast the model into the future and evaluate the effects of different policies that influence gasoline prices (taxation) and EV motorization rates (electrification). This file is primarily used to create images, but can be used to further understand how the forecasting scenarios are set up.

    Sources: Fuel prices and sales: ANP (https://www.gov.br/anp/en/access-information/what-is-anp/what-is-anp) State population, GDP and vehicle fleet: IBGE (https://www.ibge.gov.br/en/home-eng.html?lang=en-GB) State EV fleet: Anfavea (https://anfavea.com.br/en/site/anuarios/)

  2. Interpretation and identification of within-unit and cross-sectional...

    • plos.figshare.com
    pdf
    Updated May 31, 2023
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    Jonathan Kropko; Robert Kubinec (2023). Interpretation and identification of within-unit and cross-sectional variation in panel data models [Dataset]. http://doi.org/10.1371/journal.pone.0231349
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    pdfAvailable download formats
    Dataset updated
    May 31, 2023
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Jonathan Kropko; Robert Kubinec
    License

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

    Description

    While fixed effects (FE) models are often employed to address potential omitted variables, we argue that these models’ real utility is in isolating a particular dimension of variance from panel data for analysis. In addition, we show through novel mathematical decomposition and simulation that only one-way FE models cleanly capture either the over-time or cross-sectional dimensions in panel data, while the two-way FE model unhelpfully combines within-unit and cross-sectional variation in a way that produces un-interpretable answers. In fact, as we show in this paper, if we begin with the interpretation that many researchers wrongly assign to the two-way FE model—that it represents a single estimate of X on Y while accounting for unit-level heterogeneity and time shocks—the two-way FE specification is statistically unidentified, a fact that statistical software packages like R and Stata obscure through internal matrix processing.

  3. c

    Panel Data Preparation and Models for Social Equity of Bridge Management

    • kilthub.cmu.edu
    txt
    Updated May 30, 2023
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    Cari Gandy; Daniel Armanios; Constantine Samaras (2023). Panel Data Preparation and Models for Social Equity of Bridge Management [Dataset]. http://doi.org/10.1184/R1/20643327.v4
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    txtAvailable download formats
    Dataset updated
    May 30, 2023
    Dataset provided by
    Carnegie Mellon University
    Authors
    Cari Gandy; Daniel Armanios; Constantine Samaras
    License

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

    Description

    This repository provides code and data used in "Social Equity of Bridge Management" (DOI: 10.1061/JMENEA/MEENG-5265). Both the dataset used in the analysis ("Panel.csv") and the R script to create the dataset ("Panel_Prep.R") are provided. The main results of the paper as well as alternate specifications for the ordered probit with random effects models can be replicated with "Models_OrderedProbit.R". Note that these models take an extensive amount of memory and computational resources. Additionally, we have provided alternate model specifications in the "Robustness" R scripts: binomial probit with random effects, ordered probit without random effects, and Ordinary Least Squares with random effects. An extended version of the supplemental materials is also provided.

  4. f

    National Panel Survey- Universal Panel Questionnaire, 2008-2015 - United...

    • microdata.fao.org
    Updated Nov 8, 2022
    + more versions
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    National Bureau of Statistics (2022). National Panel Survey- Universal Panel Questionnaire, 2008-2015 - United Republic of Tanzania [Dataset]. https://microdata.fao.org/index.php/catalog/1772
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    Dataset updated
    Nov 8, 2022
    Dataset authored and provided by
    National Bureau of Statistics
    Time period covered
    2008 - 2015
    Area covered
    Tanzania
    Description

    Abstract

    Panel data possess several advantages over conventional cross-sectional and time-series data, including their power to isolate the effects of specific actions, treatments, and general policies often at the core of large-scale econometric development studies. While the concept of panel data alone provides the capacity for modelling the complexities of human behaviour, the notion of universal panel data - in which time- and situation-driven variances leading to variations in tools, and thus results, are mitigated - can further enhance exploitation of the richness of panel information. The NPS Universal Panel Questionnaire (UPQ) consists of both survey instruments and datasets, meticulously aligned and engineered with the aim of facilitating the use of and improving access to the wealth of panel data offered by the NPS. The NPS-UPQ provides a consistent and straightforward means of conducting not only user-driven analyses using convenient, standardized tools, but also for monitoring MKUKUTA, FYDP II, and other national level development indicators reported by the NPS.

    The design of the NPS-UPQ combines the four completed rounds of the NPS - NPS 2008/09 (R1), NPS 2010/11 (R2), NPS 2012/13 (R3), and NPS 2014/15 (R4) - into pooled, module-specific survey instruments and datasets. The panel survey instruments offer the ease of comparability over time, with modifications and variances easily identifiable as well as those aspects of the questionnaire which have remained identical and offer consistent information. By providing all module-specific data over time within compact, pooled datasets, panel datasets eliminate the need for user-generated merges between rounds and present data in a clear, logical format, increasing both the usability and comprehension of complex data.

    Geographic coverage

    Regional coverage

    Analysis unit

    Households

    Universe

    The universe includes all households and individuals in Tanzania with the exception of those residing in military barracks or other institutions.

    Kind of data

    Sample survey data [ssd]

    Sampling procedure

    SAMPLING PROCEDURE While the same sample of respondents was maintained over the first three rounds of the NPS, longitudinal surveys tend to suffer from bias introduced by households leaving the survey over time, i.e. attrition. Although the NPS maintains a highly successful recapture rate (roughly 96% retention at the household level), minimizing the escalation of this selection bias, a refresh of longitudinal cohorts was done for the NPS 2014/15 to ensure proper representativeness of estimates while maintaining a sufficient primary sample to maintain cohesion within panel analysis. A newly completed Population and Housing Census (PHC) in 2012, providing updated population figures along with changes in administrative boundaries, emboldened the opportunity to realign the NPS sample and abate collective bias potentially introduced through attrition.

    To maintain the panel concept of the NPS, the sample design for NPS 2014/2015 consisted of a combination of the original NPS sample and a new NPS sample. A nationally representative sub-sample was selected to continue as part of the “Extended Panel” while an entirely new sample, “Refresh Panel”, was selected to represent national and sub-national domains. Similar to the sample in NPS 2008/2009, the sample design for the “Refresh Panel” allows analysis at four primary domains of inference, namely: Dar es Salaam, other urban areas on mainland Tanzania, rural mainland Tanzania, and Zanzibar. This new cohort in NPS 2014/2015 will be maintained and tracked in all future rounds between national censuses.

    Mode of data collection

    Face-to-face [f2f]

    Research instrument

    The format of the NPS-UPQ survey instrument is similar to previously disseminated NPS survey instruments. Each module has a questionnaire and clearly identifies if the module collects information at the individual or household level. Within each module-specific questionnaire of the NPS-UPQ survey instrument, there are five distinct sections, arranged vertically: (1) the UPQ - “U” on the survey instrument, (2) R4, (3), R3, (4) R2, and (5) R1 – the latter 4 sections presenting each questionnaire in its original form at time of its respective dissemination.

    The uppermost section of each module’s questionnaire (“U”) represents the model universal panel questionnaire, with questions generated from the comprehensive listing of questions across all four rounds of the NPS and codes generated from the comprehensive collection of codes. The following sections are arranged vertically by round, considering R4 as most recent. While not all rounds will have data reported for each question in the UPQ and not each question will have reports for each of the UPQ codes listed, the NPS-UPQ survey instrument represents the visual, all-inclusive set of information collected by the NPS over time.

    The four round-specific sections (R4, R3, R2, R1) are aligned with their UPQ-equivalent question, visually presenting their contribution to compatibility with the UPQ. Each round-specific section includes the original round-specific variable names, response codes and skip patterns (corresponding to their respective round-specific NPS data sets, and despite their variance from other rounds or from the comprehensive UPQ code listing)4.

    • Household identification;
    • Survey staff details;
    • Household member roster;
    • Education,
    • Health,
    • Labour;
    • Food outside the household;
    • Subject welfare;
    • Food security;
    • Housing, water and sanitation;
    • Consumption of food over the past one week;
    • Non-food expenditures (past one week & one month);
    • Non-food expenditures (past twelve months);
    • Household assets;
    • Family/household non-farm enterprises;
    • Assistance and groups;
    • Credit;
    • Finance;
    • Recent shocks to household welfare;
    • Deaths in the household;
    • Household recontact information;
    • Filter questions;
    • Anthropometry.
  5. f

    Estimation results of the dynamic panel model.

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated Sep 6, 2024
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    Tan, Haobo; Liu, Ximei; Cheng, Yuchen; Pan, Lijun (2024). Estimation results of the dynamic panel model. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001323432
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    Dataset updated
    Sep 6, 2024
    Authors
    Tan, Haobo; Liu, Ximei; Cheng, Yuchen; Pan, Lijun
    Description

    In the context of the “dual carbon goals” and intensified international manufacturing competition, the green and high-end transformation of manufacturing is the direction for the industry’s future growth in China. The study discusses the effect of producer service industry co-agglomeration and manufacturing on the transformation of manufacturing into being green and high-end. Firstly, we systematically elaborate on the mechanism of the collaborative promotion of high-end manufacturing by the service and manufacturing industries and propose research hypotheses. Based on the 2010 to 2020 Hunan Provincial Statistical Yearbook data, we used the coupling coordination model and entropy method to calculate the level of collaborative development between the manufacturing and service industry, as well as the level of green high-end development in the manufacturing industry. Lastly, the specific impact of the synergistic effect of the two industries on the green high-end transformation of the manufacturing industry was analyzed using the dynamic panel regression model. Results found that service industry manufacturing synergy has a noteworthy positive driving effect on the green and high-end transformation of manufacturing. However, the impact varies across different service industries and manufacturing sectors with different technological levels. We also provide some implications for improving transformation efficiency in the green and high-end manufacturing industry.

  6. f

    Spatial panel-data FE model results.

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated Apr 13, 2023
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    Jun, Myung-Jin; Gu, Yu (2023). Spatial panel-data FE model results. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001105483
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    Dataset updated
    Apr 13, 2023
    Authors
    Jun, Myung-Jin; Gu, Yu
    Description

    This study identifies causal links between a high-PM2.5 episode in Korea and air pollutants originating from China during a high-PM2.5 episode that occurred in Korea between February 23 and March 12, 2019. Datasets on ground-based PM2.5 levels in Korea and China, airflows from the back-trajectory models, and satellite images were investigated, and long-range transboundary transport (LRTT) effects were statistically analyzed using spatial panel-data models. The findings are: 1) visual presentations of the observed PM2.5 concentration in China and Korea, back-trajectory air flows, and satellite images from the Moderate Resolution Imaging Spectroradiometer Aerosol Optical Depth and the Copernicus Atmosphere Monitoring Service clearly show that transboundary air pollutants from China affect PM2.5 concentration in Korea; 2) the effect of LRTT from China is likely to intensify under certain meteorological conditions, such as westerly winds from China to Korea, the formation of high pressure in China and low pressure in Korea, relatively high temperature, and stagnant air flow in Korea; 3) the results from the spatial panel-data models provide statistical evidence of the positive effect of LRTT from China on increasing local PM2.5 concentration in Korea. The nationwide average LRTT contributions to PM2.5 concentration in Korea are 38.4%, while regional contributions are 41.3% for the Seoul Metropolitan Area, 38.6% for the northwest region, and 27.5% for the southeast regions in Korea, indicating the greatest impact on the Seoul Metropolitan Area.

  7. Health and economic growth: Evidence from dynamic panel data of 143 years

    • plos.figshare.com
    docx
    Updated May 31, 2023
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    Rajesh Sharma (2023). Health and economic growth: Evidence from dynamic panel data of 143 years [Dataset]. http://doi.org/10.1371/journal.pone.0204940
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    docxAvailable download formats
    Dataset updated
    May 31, 2023
    Dataset provided by
    PLOShttp://plos.org/
    Authors
    Rajesh Sharma
    License

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

    Description

    This paper re-examines health-growth relationship using an unbalanced panel of 17 advanced economies for the period 1870–2013 and employs panel generalised method of moments estimator that takes care of endogeneity issues, which arise due to reverse causality. We utilise macroeconomic data corresponding to inflation, government expenditure, trade and schooling in sample countries that takes care of omitted variable bias in growth regression. With alternate model specifications, we show that population health proxied by life expectancy exert a positive and significant effect on both real income per capita as well as growth. Our results are in conformity with the existing empirical evidence on the relationship between health and economic growth, they, however, are more robust due to the presence of long-term data, appropriate econometric procedure and alternate model specifications. We also show a strong role of endogeneity in driving standard results in growth empirics. In addition to life expectancy, other constituent of human capital, education proxied by schooling is also positively associated with real per capita income. Policy implication that follows from this paper is that per capita income can be boosted through focussed policy attention on population health. The results, however, posit differing policy implications for advanced and developing economies.

  8. H

    Data from: A Bayesian Approach to Dynamic Panel Models with Endogenous...

    • dataverse.harvard.edu
    bin, pdf +1
    Updated Mar 11, 2016
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    Harvard Dataverse (2016). A Bayesian Approach to Dynamic Panel Models with Endogenous Rarely Changing Variables [Dataset]. http://doi.org/10.7910/DVN/08RCPK
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    Dataset updated
    Mar 11, 2016
    Dataset provided by
    Harvard Dataverse
    License

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

    Description

    Whether democratic and nondemocratic regimes perform differently in social provision policy is an important issue to social scientists and policy makers. Since political regimes are rarely changing, their long-term or dynamic effects on the outcome are of concern to researchers when they evaluate how political regimes affect social policy. However, estimating the dynamic effects of rarely changing variables in the analysis of time-series cross-sectional (TSCS) data by conventional estimators may be problematic when the unit effects are included in the model specification. This article proposes a model to account for and estimate the correlation between the unit effects and explanatory variables. Applying the proposed model to 18 Latin American countries, this article finds evidence that democracy has a positive effect on social spending both in the short and long term.

  9. o

    ProgressDisasterGenderLADV

    • openicpsr.org
    delimited
    Updated Nov 20, 2025
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    Shelley Hoover (2025). ProgressDisasterGenderLADV [Dataset]. http://doi.org/10.3886/E240487V1
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    delimitedAvailable download formats
    Dataset updated
    Nov 20, 2025
    Dataset provided by
    Princeton University
    Authors
    Shelley Hoover
    License

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

    Time period covered
    2022 - 2023
    Area covered
    City of Los Angeles
    Description

    Data and Code for submission to Progress in Disaster Science. Includes the following documents: 1) DataProcessing.R (Data cleaning, creation of panel data) 2) SpatialPanelModel.R (Model Configuration & Code) 3) SpatialPanelModel_ModelDiagnosticsVisuals.R (model diagnostics and manuscript visualizations) 4) LACitySVIData.csv (SVI Indicators)5) heatsvidvincidences.csv (Panel Data for regression models)

  10. m

    Data for: Fixed effects spatial panel data models with time-varying spatial...

    • data.mendeley.com
    Updated Sep 3, 2020
    + more versions
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    Xi Qu (2020). Data for: Fixed effects spatial panel data models with time-varying spatial dependence [Dataset]. http://doi.org/10.17632/pbk7k7bstk.1
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    Dataset updated
    Sep 3, 2020
    Authors
    Xi Qu
    License

    Attribution-NonCommercial 3.0 (CC BY-NC 3.0)https://creativecommons.org/licenses/by-nc/3.0/
    License information was derived automatically

    Description

    Code for simulations

  11. d

    Replication Data for: WHICH PANEL DATA ESTIMATOR SHOULD I USE?: A...

    • search.dataone.org
    • dataverse.harvard.edu
    Updated Nov 22, 2023
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    Moundigbaye, Mantobaye; William S. Rea; W. Robert Reed (2023). Replication Data for: WHICH PANEL DATA ESTIMATOR SHOULD I USE?: A CORRIGENDUM AND EXTENSION [Dataset]. http://doi.org/10.7910/DVN/YKSATT
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    Dataset updated
    Nov 22, 2023
    Dataset provided by
    Harvard Dataverse
    Authors
    Moundigbaye, Mantobaye; William S. Rea; W. Robert Reed
    Description

    This dataset contains all the materials needed to reproduce the results in "Which Panel Data Estimator Should I Use?: A Corrigendum and Extension". Please read the README document first. The results were obtained using SAS/IML software, and the files consist of SAS data sets and SAS programs.

  12. f

    Data from: Identification of Latent Subgroups for Time-varying Panel Data...

    • tandf.figshare.com
    txt
    Updated Nov 5, 2025
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    Ye He; Qing Luo; Liu Liu; Shengzhi Mao; Ling Zhou (2025). Identification of Latent Subgroups for Time-varying Panel Data Models [Dataset]. http://doi.org/10.6084/m9.figshare.30546617.v1
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    txtAvailable download formats
    Dataset updated
    Nov 5, 2025
    Dataset provided by
    Taylor & Francis
    Authors
    Ye He; Qing Luo; Liu Liu; Shengzhi Mao; Ling Zhou
    License

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

    Description

    This paper introduces a time-varying panel data model that incorporates latent group structures, designed to tackle both individual heterogeneity and smooth structural changes over time. We develop an innovative centre-augmented K-power means (KPM) methodology that promotes convergence of subjects toward their respective cluster centers, enabling the identification of latent group structures without requiring prior knowledge of group composition. This approach delivers both superior precision and computational efficiency. We provide rigorous theoretical foundations, demonstrating estimation consistency, accurate subgroup identification, and consistent selection of the number of groups. The efficacy of the proposed KPM method in accurately identifying the latent group structures in panel data is demonstrated through comprehensive numerical analysis, including simulation studies and two real-world applications.

  13. f

    Summary of the panel regression model with identified co-factors of...

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated Jan 12, 2018
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    Guthoff, Rudolf F.; Doblhammer, Gabriele; Frech, Stefanie; Kreft, Daniel (2018). Summary of the panel regression model with identified co-factors of non-adherence on a yearly basis, AOK data. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0000718926
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    Dataset updated
    Jan 12, 2018
    Authors
    Guthoff, Rudolf F.; Doblhammer, Gabriele; Frech, Stefanie; Kreft, Daniel
    Description

    Summary of the panel regression model with identified co-factors of non-adherence on a yearly basis, AOK data.

  14. f

    Spatial panel model selection.

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated Nov 13, 2023
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    Yu, Shi-Hao; Guan, Peng; Wu, Wei; Wang, Yan; Sun, Zi-Xin; Li, Ying-Jie; Huang, De-Sheng (2023). Spatial panel model selection. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0000959282
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    Dataset updated
    Nov 13, 2023
    Authors
    Yu, Shi-Hao; Guan, Peng; Wu, Wei; Wang, Yan; Sun, Zi-Xin; Li, Ying-Jie; Huang, De-Sheng
    Description

    BackgroundHuman brucellosis continues to be a great threat to human health in China. The present study aimed to investigate the spatiotemporal distribution of human brucellosis in China from 2004 to 2019, to analyze the socioeconomic factors, meteorological factors and seasonal effect affecting human brucellosis incidence in different geographical regions with the help of spatial panel model, and to provide a scientific basis for local health authorities to improve the prevention of human brucellosis.MethodsThe monthly reported number and incidence of human brucellosis in China from January 2004 to December 2019 were obtained from the Data Center for China Public Health Science. Monthly average air temperature and monthly average relative humidity of 31 provincial-level administrative units (22 provinces, 5 autonomous regions and 4 municipalities directly under the central government) in China from October 2003 to December 2019 were obtained from the National Meteorological Science Data Centre. The inventory of cattle, the inventory of sheep, beef yield, mutton yield, wool yield, milk yield and gross pastoral product of 31 provincial-level administrative units in China from 2004 to 2019 were obtained from the National Bureau of Statistics of China. The temporal and geographical distribution of human brucellosis was displayed with Microsoft Excel and ArcMap software. The spatial autocorrelation and hotspot analysis was used to describe the association among different areas. Spatial panel model was constructed to explore the combined effects on the incidence of human brucellosis in China.ResultsA total of 569,016 cases of human brucellosis were reported in the 31 provincial-level administrative units in China from January 2004 to December 2019. Human brucellosis cases were concentrated between March and July, with a peak in May, showing a clear seasonal increase. The incidence of human brucellosis in China from 2004 to 2019 showed significant spatial correlations, and hotspot analysis indicated that the high incidence of human brucellosis was mainly in the northern China, particularly in Inner Mongolia, Shanxi, and Heilongjiang. The results from spatial panel model suggested that the inventory of cattle, the inventory of sheep, beef yield, mutton yield, wool yield, milk yield, gross pastoral product, average air temperature (the same month, 2-month lagged and 3-month lagged), average relative humidity (the same month) and season variability were significantly associated with human brucellosis incidence in China.ConclusionsThe epidemic area of human brucellosis in China has been expanding and the spatial clustering has been observed. Inner Mongolia and adjacent provinces or autonomous regions are the high-risk areas of human brucellosis. The inventory of cattle and sheep, beef yield, mutton yield, wool yield, milk yield, gross pastoral product, average air temperature, average relative humidity and season variability played a significant role in the progression of human brucellosis. The present study strengthens the understanding of the relationship between socioeconomic, meteorological factors and the spatial heterogeneity of human brucellosis in China, through which ‘One Health’-based strategies and countermeasures can be provided for the government to tackle the brucellosis menace.

  15. f

    Table 1_New robust estimators for the fixed effects negative binomial model:...

    • frontiersin.figshare.com
    xlsx
    Updated Aug 26, 2025
    + more versions
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    Mohamed R. Abonazel; Ehab Ebrahim Mohamed Ebrahim; Elsayed G. Ahmed; Amera M. El-Masry (2025). Table 1_New robust estimators for the fixed effects negative binomial model: a simulation and real-world applications to European panel data.xlsx [Dataset]. http://doi.org/10.3389/fams.2025.1638596.s001
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    xlsxAvailable download formats
    Dataset updated
    Aug 26, 2025
    Dataset provided by
    Frontiers
    Authors
    Mohamed R. Abonazel; Ehab Ebrahim Mohamed Ebrahim; Elsayed G. Ahmed; Amera M. El-Masry
    License

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

    Description

    This study introduces a more flexible approach by employing the fixed effects negative binomial model to address challenges associated with outliers and dispersion. Unlike previous studies that focused on the robust estimation of the Poisson model with fixed effects, which assumes equidispersion and cannot handle dispersion in count panel data, we develop novel estimators specifically designed for the fixed effects negative binomial panel regression model in the presence of outliers, under-dispersion, and over-dispersion. The methodology is assessed through comprehensive simulation experiments across different scenarios. A comprehensive empirical analysis is conducted using updated and extended panel datasets on COVID-19 and patent applications in Europe. The results of both Monte Carlo simulation and the empirical studies indicate that the robust estimators: the robust fixed negative binomial Huber, fixed negative binomial Hampel, and fixed negative binomial Tukey estimators, outperform the classical non-robust fixed negative binomial estimator.

  16. r

    Estimation of dynamic panel data models with sample selection (replication...

    • resodate.org
    Updated Oct 2, 2025
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    Anastasia Semykina (2025). Estimation of dynamic panel data models with sample selection (replication data) [Dataset]. https://resodate.org/resources/aHR0cHM6Ly9qb3VybmFsZGF0YS56YncuZXUvZGF0YXNldC9lc3RpbWF0aW9uLW9mLWR5bmFtaWMtcGFuZWwtZGF0YS1tb2RlbHMtd2l0aC1zYW1wbGUtc2VsZWN0aW9u
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    Dataset updated
    Oct 2, 2025
    Dataset provided by
    Journal of Applied Econometrics
    ZBW
    ZBW Journal Data Archive
    Authors
    Anastasia Semykina
    Description

    We propose a new method for estimating dynamic panel data models with selection. The method uses backward substitution for the lagged dependent variable, which leads to an estimating equation that requires correcting for contemporaneous selection only. The estimator is valid under relatively weak assumptions about errors and permits avoiding the weak instruments problem associated with differencing. We also propose a simple test for selection bias that is based on the addition of a selection term to the first-difference equation and subsequent testing for significance of this term. The methods are applied to estimating dynamic earnings equations for women.

  17. R

    Panel Dataset

    • universe.roboflow.com
    zip
    Updated Dec 24, 2024
    + more versions
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    wuyang (2024). Panel Dataset [Dataset]. https://universe.roboflow.com/wuyang-dxqgu/panel-muavv/model/4
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    zipAvailable download formats
    Dataset updated
    Dec 24, 2024
    Dataset authored and provided by
    wuyang
    License

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

    Variables measured
    Screen Bounding Boxes
    Description

    Panel

    ## Overview
    
    Panel is a dataset for object detection tasks - it contains Screen annotations for 272 images.
    
    ## Getting Started
    
    You can download this dataset for use within your own projects, or fork it into a workspace on Roboflow to create your own model.
    
      ## License
    
      This dataset is available under the [CC BY 4.0 license](https://creativecommons.org/licenses/CC BY 4.0).
    
  18. f

    Random Effect Panel Regression Models of CES-D 10.

    • datasetcatalog.nlm.nih.gov
    • plos.figshare.com
    Updated Dec 1, 2016
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    Kim, Jinseok; Oh, In-Hwan; Park, Jumin; Kwon, Young Dae; Noh, Jin-Won (2016). Random Effect Panel Regression Models of CES-D 10. [Dataset]. https://datasetcatalog.nlm.nih.gov/dataset?q=0001606258
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    Dataset updated
    Dec 1, 2016
    Authors
    Kim, Jinseok; Oh, In-Hwan; Park, Jumin; Kwon, Young Dae; Noh, Jin-Won
    Description

    Random Effect Panel Regression Models of CES-D 10.

  19. R

    Data from: Back Panel Dataset

    • universe.roboflow.com
    zip
    Updated May 23, 2025
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    ssafysolution13 (2025). Back Panel Dataset [Dataset]. https://universe.roboflow.com/ssafysolution13/back-panel/model/1
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    zipAvailable download formats
    Dataset updated
    May 23, 2025
    Dataset authored and provided by
    ssafysolution13
    License

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

    Variables measured
    Back Panel Bounding Boxes
    Description

    Back Panel

    ## Overview
    
    Back Panel is a dataset for object detection tasks - it contains Back Panel annotations for 222 images.
    
    ## Getting Started
    
    You can download this dataset for use within your own projects, or fork it into a workspace on Roboflow to create your own model.
    
      ## License
    
      This dataset is available under the [CC BY 4.0 license](https://creativecommons.org/licenses/CC BY 4.0).
    
  20. d

    Data from: Data-driven model selection within the matrix completion method...

    • search.dataone.org
    • dataverse.harvard.edu
    Updated Mar 6, 2024
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    Heiniger, Sandro (2024). Data-driven model selection within the matrix completion method for causal panel data models [Dataset]. http://doi.org/10.7910/DVN/JGGBQG
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    Dataset updated
    Mar 6, 2024
    Dataset provided by
    Harvard Dataverse
    Authors
    Heiniger, Sandro
    Description

    Replication data for application. Visit https://dataone.org/datasets/sha256%3Ad1b60121aa674a5618dfe7e00ccaaae8beb063be28c982d294277dafeb21e5a6 for complete metadata about this dataset.

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Sergio Prolo (2024). Panel dataset on Brazilian fuel demand [Dataset]. http://doi.org/10.17632/hzpwbp7j22.1

Panel dataset on Brazilian fuel demand

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Dataset updated
Oct 7, 2024
Authors
Sergio Prolo
License

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

Area covered
Brazil
Description

Summary : Fuel demand is shown to be influenced by fuel prices, people's income and motorization rates. We explore the effects of electric vehicle's rates in gasoline demand using this panel dataset.

Files : dataset.csv - Panel dimensions are the Brazilian state ( i ) and year ( t ). The other columns are: gasoline sales per capita (ln_Sg_pc), prices of gasoline (ln_Pg) and ethanol (ln_Pe) and their lags, motorization rates of combustion vehicles (ln_Mi_c) and electric vehicles (ln_Mi_e) and GDP per capita (ln_gdp_pc). All variables are all under the natural log function, since we use this to calculate demand elasticities in a regression model.

adjacency.csv - The adjacency matrix used in interaction with electric vehicles' motorization rates to calculate spatial effects. At first, it follows a binary adjacency formula: for each pair of states i and j, the cell (i, j) is 0 if the states are not adjacent and 1 if they are. Then, each row is normalized to have sum equal to one.

regression.do - Series of Stata commands used to estimate the regression models of our study. dataset.csv must be imported to work, see comment section.

dataset_predictions.xlsx - Based on the estimations from Stata, we use this excel file to make average predictions by year and by state. Also, by including years beyond the last panel sample, we also forecast the model into the future and evaluate the effects of different policies that influence gasoline prices (taxation) and EV motorization rates (electrification). This file is primarily used to create images, but can be used to further understand how the forecasting scenarios are set up.

Sources: Fuel prices and sales: ANP (https://www.gov.br/anp/en/access-information/what-is-anp/what-is-anp) State population, GDP and vehicle fleet: IBGE (https://www.ibge.gov.br/en/home-eng.html?lang=en-GB) State EV fleet: Anfavea (https://anfavea.com.br/en/site/anuarios/)

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