posted on 2020-09-22, 10:04authored byAlessio Benavoli, Dario Azzimonti, Dario Piga
Gaussian processes (GPs) are distributions over functions, which provide a Bayesian
nonparametric approach to regression and classification. In spite of their success, GPs
have limited use in some applications, for example, in some cases a symmetric distribution
with respect to its mean is an unreasonable model. This implies, for instance, that the
mean and the median coincide, while the mean and median in an asymmetric (skewed)
distribution can be different numbers. In this paper, we propose skew-Gaussian processes
(SkewGPs) as a non-parametric prior over functions. A SkewGP extends the multivariate
unified skew normal distribution over finite dimensional vectors to a stochastic processes.
The SkewGP class of distributions includes GPs and, therefore, SkewGPs inherit all good
properties of GPs and increase their flexibility by allowing asymmetry in the probabilistic
model. By exploiting the fact that SkewGP and probit likelihood are conjugate model, we
derive closed form expressions for the marginal likelihood and predictive distribution of
this new nonparametric classifier. We verify empirically that the proposed SkewGP
classifier provides a better performance than a GP classifier based on either Laplace’s
method or expectation propagation.