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Significance, relevance and explainability in the machine learning age: an econometrics and financial data science perspective

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  • Andreas G. F. Hoepner
  • David McMillan
  • Andrew Vivian
  • Chardin Wese Simen

Abstract

Although machine learning is frequently associated with neural networks, it also comprises econometric regression approaches and other statistical techniques whose accuracy enhances with increasing observation. What constitutes high quality machine learning is yet unclear though. Proponents of deep learning (i.e. neural networks) value computational efficiency over human interpretability and tolerate the ‘black box’ appeal of their algorithms, whereas proponents of explainable artificial intelligence (xai) employ traceable ‘white box’ methods (e.g. regressions) to enhance explainability to human decision makers. We extend Brooks et al.’s [2019. ‘Financial Data Science: The Birth of a New Financial Research Paradigm Complementing Econometrics?’ European Journal of Finance 25 (17): 1627–36.] work on significance and relevance as assessment critieria in econometrics and financial data science to contribute to this debate. Specifically, we identify explainability as the Achilles heel of classic machine learning approaches such as neural networks, which are not fully replicable, lack transparency and traceability and therefore do not permit any attempts to establish causal inference. We conclude by suggesting routes for future research to advance the design and efficiency of ‘white box’ algorithms.

Suggested Citation

  • Andreas G. F. Hoepner & David McMillan & Andrew Vivian & Chardin Wese Simen, 2021. "Significance, relevance and explainability in the machine learning age: an econometrics and financial data science perspective," The European Journal of Finance, Taylor & Francis Journals, vol. 27(1-2), pages 1-7, January.
  • Handle: RePEc:taf:eurjfi:v:27:y:2021:i:1-2:p:1-7
    DOI: 10.1080/1351847X.2020.1847725
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    Cited by:

    1. Noori, Mohammad & Hitaj, Asmerilda, 2023. "Dissecting hedge funds' strategies," International Review of Financial Analysis, Elsevier, vol. 85(C).
    2. Kwabena Adu-Ababio & Aliisa Koivisto & Eliya Lungu & Evaristo Mwale & Jonathan Msoni & Kangwa Musole, 2023. "Estimating tax gaps in Zambia: A bottom-up approach based on audit assessments," WIDER Working Paper Series wp-2023-25, World Institute for Development Economic Research (UNU-WIDER).
    3. Andrés Alonso & José Manuel Carbó, 2022. "Accuracy of explanations of machine learning models for credit decisions," Working Papers 2222, Banco de España.
    4. Ajitha Kumari Vijayappan Nair Biju & Ann Susan Thomas & J Thasneem, 2024. "Examining the research taxonomy of artificial intelligence, deep learning & machine learning in the financial sphere—a bibliometric analysis," Quality & Quantity: International Journal of Methodology, Springer, vol. 58(1), pages 849-878, February.
    5. Sandra Maria Correia Loureiro & Jorge Nascimento, 2021. "Shaping a View on the Influence of Technologies on Sustainable Tourism," Sustainability, MDPI, vol. 13(22), pages 1-18, November.
    6. Johnstone, David, 2022. "Accounting research and the significance test crisis," CRITICAL PERSPECTIVES ON ACCOUNTING, Elsevier, vol. 89(C).

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