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Predictive economics: Rethinking economic methodology with machine learning

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  • Miguel Alves Pereira

Abstract

This article proposes predictive economics as a distinct analytical perspective within economics, grounded in machine learning and centred on predictive accuracy rather than causal identification. Drawing on the instrumentalist tradition (Friedman), the explanation-prediction divide (Shmueli), and the contrast between modelling cultures (Breiman), we formalise prediction as a valid epistemological and methodological objective. Reviewing recent applications across economic subfields, we show how predictive models contribute to empirical analysis, particularly in complex or data-rich contexts. This perspective complements existing approaches and supports a more pluralistic methodology - one that values out-of-sample performance alongside interpretability and theoretical structure.

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  • Miguel Alves Pereira, 2025. "Predictive economics: Rethinking economic methodology with machine learning," Papers 2510.04726, arXiv.org.
  • Handle: RePEc:arx:papers:2510.04726
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    References listed on IDEAS

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