Nonparametric inference of prior probabilities from Bayes-optimal behavior
–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).
Neural Information Processing Systems
Dec-31-2006