SOTAVerified

Gaussian process regression with Student-t likelihood

2009-12-01NeurIPS 2009Unverified0· sign in to hype

Jarno Vanhatalo, Pasi Jylänki, Aki Vehtari

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

In the Gaussian process regression the observation model is commonly assumed to be Gaussian, which is convenient in computational perspective. However, the drawback is that the predictive accuracy of the model can be significantly compromised if the observations are contaminated by outliers. A robust observation model, such as the Student-t distribution, reduces the influence of outlying observations and improves the predictions. The problem, however, is the analytically intractable inference. In this work, we discuss the properties of a Gaussian process regression model with the Student-t likelihood and utilize the Laplace approximation for approximate inference. We compare our approach to a variational approximation and a Markov chain Monte Carlo scheme, which utilize the commonly used scale mixture representation of the Student-t distribution.

Tasks

Reproductions