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Enhancing the Demand for Labour survey by including skills from online job advertisements using model-assisted calibration

Author

Listed:
  • Maciej Berk{e}sewicz
  • Greta Bia{l}kowska
  • Krzysztof Marcinkowski
  • Magdalena Ma'slak
  • Piotr Opiela
  • Robert Pater
  • Katarzyna Zadroga

Abstract

In the article we describe an enhancement to the Demand for Labour (DL) survey conducted by Statistics Poland, which involves the inclusion of skills obtained from online job advertisements. The main goal is to provide estimates of the demand for skills (competences), which is missing in the DL survey. To achieve this, we apply a data integration approach combining traditional calibration with the LASSO-assisted approach to correct representation error in the online data. Faced with the lack of access to unit-level data from the DL survey, we use estimated population totals and propose a~bootstrap approach that accounts for the uncertainty of totals reported by Statistics Poland. We show that the calibration estimator assisted with LASSO outperforms traditional calibration in terms of standard errors and reduces representation bias in skills observed in online job ads. Our empirical results show that online data significantly overestimate interpersonal, managerial and self-organization skills while underestimating technical and physical skills. This is mainly due to the under-representation of occupations categorised as Craft and Related Trades Workers and Plant and Machine Operators and Assemblers.

Suggested Citation

  • Maciej Berk{e}sewicz & Greta Bia{l}kowska & Krzysztof Marcinkowski & Magdalena Ma'slak & Piotr Opiela & Robert Pater & Katarzyna Zadroga, 2019. "Enhancing the Demand for Labour survey by including skills from online job advertisements using model-assisted calibration," Papers 1908.06731, arXiv.org.
  • Handle: RePEc:arx:papers:1908.06731
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    References listed on IDEAS

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    1. David Evans & Claire Mason & Haohui Chen & Andrew Reeson, 2023. "An algorithm for predicting job vacancies using online job postings in Australia," Palgrave Communications, Palgrave Macmillan, vol. 10(1), pages 1-9, December.

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