Mixtures of Gaussian Processes
–Neural Information Processing Systems
We introduce the mixture of Gaussian processes (MGP) model which is useful for applications in which the optimal bandwidth of a map is input dependent. The MGP is derived from the mixture of experts model and can also be used for modeling general conditional probability densities. We discuss how Gaussian processes -in particular in form of Gaussian process classification, the support vector machine and the MGP modelcan beused for quantifying the dependencies in graphical models. 1 Introduction Gaussian processes are typically used for regression where it is assumed that the underlying functionis generated by one infinite-dimensional Gaussian distribution (i.e.
Neural Information Processing Systems
Dec-31-2001