How priors of initial hyperparameters affect Gaussian process regression models

05/25/2016
by   Zexun Chen, et al.
0

The hyperparameters in Gaussian process regression (GPR) model with a specified kernel are often estimated from the data via the maximum marginal likelihood. Due to the non-convexity of marginal likelihood with respect to the hyperparameters, the optimization may not converge to the global maxima. A common approach to tackle this issue is to use multiple starting points randomly selected from a specific prior distribution. As a result the choice of prior distribution may play a vital role in the predictability of this approach. However, there exists little research in the literature to study the impact of the prior distributions on the hyperparameter estimation and the performance of GPR. In this paper, we provide the first empirical study on this problem using simulated and real data experiments. We consider different types of priors for the initial values of hyperparameters for some commonly used kernels and investigate the influence of the priors on the predictability of GPR models. The results reveal that, once a kernel is chosen, different priors for the initial hyperparameters have no significant impact on the performance of GPR prediction, despite that the estimates of the hyperparameters are very different to the true values in some cases.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/30/2021

On the optimization of hyperparameters in Gaussian process regression with the help of low-order high-dimensional model representation

When the data are sparse, optimization of hyperparameters of the kernel ...
research
06/20/2022

Noise Estimation in Gaussian Process Regression

We develop a computational procedure to estimate the covariance hyperpar...
research
11/30/2019

iprior: An R Package for Regression Modelling using I-priors

This is an overview of the R package iprior, which implements a unified ...
research
07/30/2020

Regression modelling with I-priors

We introduce the I-prior methodology as a unifying framework for estimat...
research
02/13/2019

Efficient Bayesian shape-restricted function estimation with constrained Gaussian process priors

This article revisits the problem of Bayesian shape-restricted inference...
research
03/17/2023

Error Bounds for Kernel-Based Linear System Identification with Unknown Hyperparameters

The kernel-based method has been successfully applied in linear system i...
research
11/29/2019

Richer priors for infinitely wide multi-layer perceptrons

It is well-known that the distribution over functions induced through a ...

Please sign up or login with your details

Forgot password? Click here to reset