Abstract
Theories of how people learn relationships between continuous variables have tended to focus on two possibilities: one, that people are estimating explicit functions, or two that they are performing associative learning supported by similarity. We provide a rational analysis of function learning, drawing on work on regression in machine learning and statistics. Using the equivalence of Bayesian linear regression and Gaussian processes, which provide a probabilistic basis for similarity-based function learning, we show that learning explicit rules and using similarity can be seen as two views of one solution to this problem. We use this insight to define a rational model of human function learning that combines the strengths of both approaches and accounts for a wide variety of experimental results.
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Lucas, C. G., Griffiths, T. L., Williams, J. J., & Kalish, M. L. (2015, October 26). A rational model of function learning. Psychonomic Bulletin and Review. Springer Science and Business Media, LLC. https://doi.org/10.3758/s13423-015-0808-5
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