Evolution of Covariance Functions for Gaussian Process Regression using Genetic Programming

05/16/2013
by   Gabriel Kronberger, et al.
0

In this contribution we describe an approach to evolve composite covariance functions for Gaussian processes using genetic programming. A critical aspect of Gaussian processes and similar kernel-based models such as SVM is, that the covariance function should be adapted to the modeled data. Frequently, the squared exponential covariance function is used as a default. However, this can lead to a misspecified model, which does not fit the data well. In the proposed approach we use a grammar for the composition of covariance functions and genetic programming to search over the space of sentences that can be derived from the grammar. We tested the proposed approach on synthetic data from two-dimensional test functions, and on the Mauna Loa CO2 time series. The results show, that our approach is feasible, finding covariance functions that perform much better than a default covariance function. For the CO2 data set a composite covariance function is found, that matches the performance of a hand-tuned covariance function.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/10/2018

Non-linear process convolutions for multi-output Gaussian processes

The paper introduces a non-linear version of the process convolution for...
research
11/26/2015

The Automatic Statistician: A Relational Perspective

Gaussian Processes (GPs) provide a general and analytically tractable wa...
research
10/17/2018

A natural 4-parameter family of covariance functions for stationary Gaussian processes

A four-parameter family of covariance functions for stationary Gaussian ...
research
05/18/2018

Fast Kernel Approximations for Latent Force Models and Convolved Multiple-Output Gaussian processes

A latent force model is a Gaussian process with a covariance function in...
research
06/19/2019

Variational Gaussian Processes with Signature Covariances

We introduce a Bayesian approach to learn from stream-valued data by usi...
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
12/23/2018

Detecting British Columbia Coastal Rainfall Patterns by Clustering Gaussian Processes

Functional data analysis is a statistical framework where data are assum...

Please sign up or login with your details

Forgot password? Click here to reset