Nonparametric inference of prior probabilities from Bayes-optimal behavior

Paninski, Liam

Neural Information Processing Systems 

We discuss a method for obtaining a subject's a priori beliefs from his/her behavior in a psychophysics context, under the assumption that the behavior is (nearly) optimal from a Bayesian perspective. The method is nonparametric in the sense that we do not assume that the prior belongs to any fixed class of distributions (e.g., Gaussian).

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