Evolving Gaussian Process kernels from elementary mathematical expressions

10/11/2019
by   I. Roman, et al.
0

Choosing the most adequate kernel is crucial in many Machine Learning applications. Gaussian Process is a state-of-the-art technique for regression and classification that heavily relies on a kernel function. However, in the Gaussian Process literature, kernels have usually been either ad hoc designed, selected from a predefined set, or searched for in a space of compositions of kernels which have been defined a priori. In this paper, we propose a Genetic-Programming algorithm that represents a kernel function as a tree of elementary mathematical expressions. By means of this representation, a wider set of kernels can be modeled, where potentially better solutions can be found, although new challenges also arise. The proposed algorithm is able to overcome these difficulties and find kernels that accurately model the characteristics of the data. This method has been tested in several real-world time-series extrapolation problems, improving the state-of-the-art results while reducing the complexity of the kernels.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/03/2022

Learning "best" kernels from data in Gaussian process regression. With application to aerodynamics

This paper introduces algorithms to select/design kernels in Gaussian pr...
research
04/18/2020

Kernels for time series with irregularly-spaced multivariate observations

Time series are an interesting frontier for kernel-based methods, for th...
research
10/25/2016

Gaussian Process Kernels for Popular State-Space Time Series Models

In this paper we investigate a link between state- space models and Gaus...
research
05/24/2020

Longitudinal Deep Kernel Gaussian Process Regression

We consider the problem of learning predictive models from longitudinal ...
research
03/02/2021

Kernel-Based Models for Influence Maximization on Graphs based on Gaussian Process Variance Minimization

The inference of novel knowledge, the discovery of hidden patterns, and ...
research
06/14/2021

Marginalising over Stationary Kernels with Bayesian Quadrature

Marginalising over families of Gaussian Process kernels produces flexibl...
research
07/21/2021

Online structural kernel selection for mobile health

Motivated by the need for efficient and personalized learning in mobile ...

Please sign up or login with your details

Forgot password? Click here to reset