A Nonparametric Conjugate Prior Distribution for the Maximizing Argument of a Noisy Function
Ortega, Pedro, Grau-moya, Jordi, Genewein, Tim, Balduzzi, David, Braun, Daniel
–Neural Information Processing Systems
We propose a novel Bayesian approach to solve stochastic optimization problems that involve finding extrema of noisy, nonlinear functions. Previous work has focused on representing possible functions explicitly, which leads to a two-step procedure of first, doing inference over the function space and second, finding the extrema of these functions. Here we skip the representation step and directly model the distribution over extrema. To this end, we devise a nonparametric conjugate prior based on a kernel regressor.
Neural Information Processing Systems
Dec-31-2012