Research article

On the inaccuracies of macroeconomic observations

  • Received: 05 June 2024 Revised: 17 August 2024 Accepted: 06 September 2024 Published: 11 September 2024
  • JEL Codes: A1, E01, C18

  • Transparency about measurement errors in macroeconomic statistics is lacking. Inaccuracy is usually acknowledged only during extraordinary situations or under specific policy demands. Despite advances in technology and methodology, the overall accuracy has not improved due to economic changes and new complex activities. Even striking historical efforts did not change the persistence of substantial inaccuracies and biases. While the pioneers of national accounting addressed inaccuracies by using multiple accounting approaches and transparently reported error estimates, current statistical offices and other data producers rarely publish error measures, thereby creating an illusion of precision. Best practices and new measurement methods, such as satellite observation, Big Data, and Artificial Intelligence, promise improvements but face significant challenges without clear standards and an awareness of measurement error and bias. Regular and transparent reporting of measurement errors is and will be essential to improve the data reliability. Empowering data users—funding agencies, academics, and journalists—through error reporting and education can challenge the status quo.

    Citation: Peter A.G. van Bergeijk. On the inaccuracies of macroeconomic observations[J]. National Accounting Review, 2024, 6(3): 367-383. doi: 10.3934/NAR.2024017

    Related Papers:

  • Transparency about measurement errors in macroeconomic statistics is lacking. Inaccuracy is usually acknowledged only during extraordinary situations or under specific policy demands. Despite advances in technology and methodology, the overall accuracy has not improved due to economic changes and new complex activities. Even striking historical efforts did not change the persistence of substantial inaccuracies and biases. While the pioneers of national accounting addressed inaccuracies by using multiple accounting approaches and transparently reported error estimates, current statistical offices and other data producers rarely publish error measures, thereby creating an illusion of precision. Best practices and new measurement methods, such as satellite observation, Big Data, and Artificial Intelligence, promise improvements but face significant challenges without clear standards and an awareness of measurement error and bias. Regular and transparent reporting of measurement errors is and will be essential to improve the data reliability. Empowering data users—funding agencies, academics, and journalists—through error reporting and education can challenge the status quo.



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