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Author
Zalas Sebastian (FAME-GRAPE, Poland; University of Warsaw, Poland), Drążkowski Hubert (Warsaw University of Technology, Poland; FAME-GRAPE, Poland)
Title
The Evolution of the Labour Share in Poland: New Evidence from Firm-Level Data
Kształtowanie się udziału płac w wartości dodanej w Polsce. Nowe szacunki z danych jednostkowych
Source
Gospodarka Narodowa. The Polish Journal of Economics, 2023, nr 3, s. 13-33, tab., wykr., bibliogr. 34 poz.
Keyword
Płace, Wartość dodana, Przedsiębiorstwo
Wages, Value added, Enterprises
Note
JEL Classification: C81, D33, E25
streszcz., summ.
Abstract
Oceniamy przydatność niereprezentatywnych danych jednostkowych o firmach (Orbis) do wnioskowania o procesach gospodarczych w Polsce. Reprezentatywne dane jednostkowe nie są w Polsce dostępne do badań naukowych. Korzystając z dostępnych badań Growca [2009], dotyczących udziału płac w wartości dodanej w latach 1995-2008 w firmach zatrudniających ponad 50 pracowników, skupiamy się na tej samej kategorii ekonomicznej. Rozszerzamy zakres badania do 2019 r. oraz poszerzamy grupę przedsiębiorstw o firmy zatrudniające mniej niż 50 pracowników. Nasze oszacowania są podobne do oszacowań Growca [2009]. Wskazujemy także na wzrost udziału płac w wartości dodanej, szczególnie w ostatniej dekadzie oraz w mniejszych przedsiębiorstwach.(abstrakt oryginalny)

We evaluate the usefulness of non-representative registry data such as Orbis in drawing inferences about economic phenomena in Poland. While firm-level studies of economic phenomena are of key policy relevance, census data and representative samples are scarcely available across countries. We obtain estimates of the labour share for the period 1995-2019. For the overlapping period and samples, we compare our estimates to Growiec [2009], who drew on a census of Polish firms employing 50+ employees. We also refer to OECD STAN data. We demonstrate that time patterns are common across data sources. Additionally, we study the potential for various imputation methods to enrich inference.(original abstract)
Accessibility
The Library of Warsaw School of Economics
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Bibliography
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ISSN
0867-0005
Language
eng
URI / DOI
http://dx.doi.org/10.33119/GN/170227
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