Extended Linear Models with Gaussian Priors Extended Linear Models with Gaussian Priors

Abstract

In extended linear models the input space is projected onto a feature space by means of an arbitrary non-linear transformation. A linear model is then applied to the feature space to construct the model output. The dimension of the feature space can be very large, or even infinite, giving the model a very big flexibility. Support Vector Machines (SVM’s) and Gaussian processes are two examples of such models. In this technical report I present a model in which the dimension of the feature space remains finite, and where a Bayesian approach is used to train the model with Gaussian priors on the parameters. The Relevance Vector Machine, introduced by Tipping Tipping (2001), is a particular case of such a model. I give the detailed derivations of the expectation-maximisation (EM) algorithm used in the training. These derivations are not found in the literature, and might be helpful for newcomers

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