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  • Search: subject:"Kapteyn-Ypma​ model"
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Year of publication
Subject
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Kapteyn-Ypma model 4 labour earnings 4 measurement error 4 Lohn 3 Statistical error 3 Statistischer Fehler 3 Wages 3 Arbeitsmarktstatistik 2 Labour statistics 2 earnings prediction 2 misclassification error 2 mixture factor model 2 Einkommen 1 Estimation 1 Forecasting model 1 Income 1 Kapteyn-Ypma​ model 1 Labour earnings 1 Measurement 1 Measurement error 1 Messung 1 Misclassification error 1 Prognoseverfahren 1 Schätzung 1 Theorie 1 Theory 1
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Online availability
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Free 4 Undetermined 1
Type of publication
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Book / Working Paper 4 Article 1
Type of publication (narrower categories)
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Working Paper 4 Arbeitspapier 2 Graue Literatur 2 Non-commercial literature 2 Article in journal 1 Aufsatz in Zeitschrift 1
Language
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English 5
Author
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Rios-Avila, Fernando 5 Jenkins, Stephen 3 Jenkins, Stephen P. 2
Published in...
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Discussion paper series / IZA 2 IZA Discussion Papers 2 Economics letters 1
Source
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ECONIS (ZBW) 3 EconStor 2
Showing 1 - 5 of 5
Cover Image
Measurement Error in Earnings Data: Replication of Meijer, Rohwedder, and Wansbeek's Mixture Model Approach to Combining Survey and Register Data
Jenkins, Stephen P.; Rios-Avila, Fernando - 2021
Meijer, Rohwedder, and Wansbeek (MRW, Journal of Business & Economic Statistics, 2012) develop methods for prediction of a single earnings figure per worker from mixture factor models fitted using earnings data from multiple linked data sources. MRW apply their method using parameter estimates...
Persistent link: https://www.econbiz.de/10012498073
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Cover Image
Measurement error in earnings data: replication of Meijer, Rohwedder, and Wansbeek’s mixture model approach to combining survey and register data
Jenkins, Stephen; Rios-Avila, Fernando - 2021
Meijer, Rohwedder, and Wansbeek (MRW, Journal of Business & Economic Statistics, 2012) develop methods for prediction of a single earnings figure per worker from mixture factor models fitted using earnings data from multiple linked data sources. MRW apply their method using parameter estimates...
Persistent link: https://www.econbiz.de/10012485862
Saved in:
Cover Image
Modelling Errors in Survey and Administrative Data on Employment Earnings: Sensitivity to the Fraction Assumed to Have Error-Free Earnings
Jenkins, Stephen P.; Rios-Avila, Fernando - 2020
Kapteyn and Ypma (Journal of Labour Economics 2007) is an influential study of errors in survey and administrative data on employment earnings. To fit their mixture models, Kapteyn and Ypma assume a specific fraction of their sample have error-free earnings. Using a new UK dataset, we assess the...
Persistent link: https://www.econbiz.de/10012269874
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Cover Image
Modelling errors in survey and administrative data on employment earnings : sensitivity to the fraction assumed to have error-free earnings
Jenkins, Stephen; Rios-Avila, Fernando - 2020
Kapteyn and Ypma (Journal of Labour Economics 2007) is an influential study of errors in survey and administrative data on employment earnings. To fit their mixture models, Kapteyn and Ypma assume a specific fraction of their sample have error-free earnings. Using a new UK dataset, we assess the...
Persistent link: https://www.econbiz.de/10012207549
Saved in:
Cover Image
Modelling errors in survey and administrative data on employment earnings : sensitivity to the fraction assumed to have error-free earnings
Jenkins, Stephen; Rios-Avila, Fernando - In: Economics letters 192 (2020), pp. 1-4
Persistent link: https://www.econbiz.de/10012508828
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