Gaussian Process Product Models
- đ¤ Speaker: Ryan Adams
- đ Date & Time: Wednesday 14 March 2007, 14:00 - 15:00
- đ Venue: TCM Seminar Room, Cavendish Laboratory, Department of Physics
Abstract
The Gaussian process is an appealing tool for nonlinear Bayesian regression. Many times, however, GPs are used with simple stationary covariance functions that may not reflect true prior beliefs regarding the function being regressed. Specifying nonstationary covariance functions directly, however, can be unintuitive and makes just as strong prior assumptions as the stationary case. In this talk I will present an approach for efficiently modelling nonstationarity in a nonparametric manner via a product of stationary latent Gaussian processes.
Series This talk is part of the Inference Group series.
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Wednesday 14 March 2007, 14:00-15:00