Student-t Processes as Alternatives to Gaussian Processes

02/18/2014
by   Amar Shah, et al.
0

We investigate the Student-t process as an alternative to the Gaussian process as a nonparametric prior over functions. We derive closed form expressions for the marginal likelihood and predictive distribution of a Student-t process, by integrating away an inverse Wishart process prior over the covariance kernel of a Gaussian process model. We show surprising equivalences between different hierarchical Gaussian process models leading to Student-t processes, and derive a new sampling scheme for the inverse Wishart process, which helps elucidate these equivalences. Overall, we show that a Student-t process can retain the attractive properties of a Gaussian process -- a nonparametric representation, analytic marginal and predictive distributions, and easy model selection through covariance kernels -- but has enhanced flexibility, and predictive covariances that, unlike a Gaussian process, explicitly depend on the values of training observations. We verify empirically that a Student-t process is especially useful in situations where there are changes in covariance structure, or in applications like Bayesian optimization, where accurate predictive covariances are critical for good performance. These advantages come at no additional computational cost over Gaussian processes.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/18/2018

Upgrading from Gaussian Processes to Student's-T Processes

Gaussian process priors are commonly used in aerospace design for perfor...
research
03/13/2020

The Elliptical Processes: a New Family of Flexible Stochastic Processes

We present the elliptical processes-a new family of stochastic processes...
research
08/01/2011

Adaptive Gaussian Predictive Process Approximation

We address the issue of knots selection for Gaussian predictive process ...
research
03/13/2017

Multivariate Gaussian and Student-t Process Regression for Multi-output Prediction

Gaussian process for vector-valued function model has been shown to be a...
research
06/17/2022

On Integrating Prior Knowledge into Gaussian Processes for Prognostic Health Monitoring

Gaussian process regression is a powerful method for predicting states b...
research
05/26/2020

Skew Gaussian Processes for Classification

Gaussian processes (GPs) are distributions over functions, which provide...
research
10/04/2016

Model Selection for Gaussian Process Regression by Approximation Set Coding

Gaussian processes are powerful, yet analytically tractable models for s...

Please sign up or login with your details

Forgot password? Click here to reset