An analytic comparison of regularization methods for Gaussian Processes

02/02/2016
by   Hossein Mohammadi, et al.
0

Gaussian Processes (GPs) are a popular approach to predict the output of a parameterized experiment. They have many applications in the field of Computer Experiments, in particular to perform sensitivity analysis, adaptive design of experiments and global optimization. Nearly all of the applications of GPs require the inversion of a covariance matrix that, in practice, is often ill-conditioned. Regularization methodologies are then employed with consequences on the GPs that need to be better understood.The two principal methods to deal with ill-conditioned covariance matrices are i) pseudoinverse and ii) adding a positive constant to the diagonal (the so-called nugget regularization).The first part of this paper provides an algebraic comparison of PI and nugget regularizations. Redundant points, responsible for covariance matrix singularity, are defined. It is proven that pseudoinverse regularization, contrarily to nugget regularization, averages the output values and makes the variance zero at redundant points. However, pseudoinverse and nugget regularizations become equivalent as the nugget value vanishes. A measure for data-model discrepancy is proposed which serves for choosing a regularization technique.In the second part of the paper, a distribution-wise GP is introduced that interpolates Gaussian distributions instead of data points. Distribution-wise GP can be seen as an improved regularization method for GPs.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/19/2019

Exact Gaussian Processes on a Million Data Points

Gaussian processes (GPs) are flexible models with state-of-the-art perfo...
research
03/28/2018

Quantum algorithms for training Gaussian Processes

Gaussian processes (GPs) are important models in supervised machine lear...
research
06/05/2020

A conditional one-output likelihood formulation for multitask Gaussian processes

Multitask Gaussian processes (MTGP) are the Gaussian process (GP) framew...
research
06/17/2022

Shallow and Deep Nonparametric Convolutions for Gaussian Processes

A key challenge in the practical application of Gaussian processes (GPs)...
research
11/17/2018

A Greedy approximation scheme for Sparse Gaussian process regression

In their standard form Gaussian processes (GPs) provide a powerful non-p...
research
03/29/2021

Gaussian Process for Tomography

Tomographic reconstruction, despite its revolutionary impact on a wide r...
research
06/01/2023

A Mini-Batch Method for Solving Nonlinear PDEs with Gaussian Processes

Gaussian processes (GPs) based methods for solving partial differential ...

Please sign up or login with your details

Forgot password? Click here to reset