Modeling machine learning: A cognitive economic approach

Andrew Caplin, Daniel Martin, Philip Marx

    Research output: Contribution to journalArticlepeer-review

    Abstract

    We investigate whether the predictions of modern machine learning algorithms are consistent with economic models of human cognition. To test these models we run an experiment in which we vary the loss function used in training a leading deep learning convolutional neural network to predict pneumonia from chest X-rays. The first cognitive economic model we test, capacity-constrained learning, corresponds with an intuitive notion of machine learning: that an algorithm chooses among a feasible set of learning strategies in order to minimize the loss function used in training. Our experiment shows systematic deviations from the testable implications of this model. Instead, we find that changes in the loss function impact learning just as they might if the algorithm was a human being who found learning costly.

    Original languageEnglish (US)
    Article number105970
    JournalJournal of Economic Theory
    Volume224
    DOIs
    StatePublished - Mar 2025

    Keywords

    • Algorithms
    • Artificial intelligence
    • Information economics
    • Information frictions
    • Machine learning
    • Rational inattention

    ASJC Scopus subject areas

    • Economics and Econometrics

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