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Measurement error of global production

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  • van Bergeijk, P.A.G.

Abstract

This working paper discusses the need and possibility to report measurement error together with key (macroeconomic) statistics as shown by a case study of the real rate of growth of world GDP (Gross Planet Product). The IMF estimates for individual years since 1980 and continue to change when a new vintage of the World Economic Outlook data base is published (each year in October). The different vintages provide an indication of the extent of measurement error. According to two measures for measurement error the IMF data for Gross Planet product on average have an implicit minimal measurement error (IMME) of four percent and maximum ratio (MR) of eighteen percent. Even for long-term growth rates that are calculated over two decades growth rates have a substantial measurement error, namely an IMME of 1.7% and an MR of 8.0%. Measurement error of Gross Planet Product is thus economically and statistically significant and needs to be addressed in studies that analyse or use global production data. Measurement error in economics currently is significant, is not showing improvement over time and could be reported transparently without technical or budgetary problems.

Suggested Citation

  • van Bergeijk, P.A.G., 2017. "Measurement error of global production," ISS Working Papers - General Series 632, International Institute of Social Studies of Erasmus University Rotterdam (ISS), The Hague.
  • Handle: RePEc:ems:euriss:100849
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    1. Anca Ioana Troto (Iacob), 2022. "Theoretical And Conceptual Study On The Evolution Of The Globalization Phenomenon," Annals - Economy Series, Constantin Brancusi University, Faculty of Economics, vol. 1, pages 229-234, February.

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    Keywords

    measurement error; IMF; GDP; world production; implicit minimal measurement error; maximum ratio;
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