Bayesian Approximate Kernel Regression with Variable Selection
Lorin Crawford, Kris C. Wood, Xiang Zhou, and Sayan Mukherjee

TL;DR
This paper introduces a Bayesian kernel regression framework with effect size analogs for variable selection, utilizing random Fourier features to handle nonlinear structures efficiently, and demonstrates its effectiveness in genetics applications.
Contribution
It proposes a novel effect size analog for Bayesian kernel regression using shift-invariant kernels and random Fourier bases, enabling variable selection in nonlinear models.
Findings
Effective variable selection in nonlinear kernel models.
Competitive performance in genetic prediction and association mapping.
Efficient computation via random Fourier expansions.
Abstract
Nonlinear kernel regression models are often used in statistics and machine learning because they are more accurate than linear models. Variable selection for kernel regression models is a challenge partly because, unlike the linear regression setting, there is no clear concept of an effect size for regression coefficients. In this paper, we propose a novel framework that provides an effect size analog of each explanatory variable for Bayesian kernel regression models when the kernel is shift-invariant --- for example, the Gaussian kernel. We use function analytic properties of shift-invariant reproducing kernel Hilbert spaces (RKHS) to define a linear vector space that: (i) captures nonlinear structure, and (ii) can be projected onto the original explanatory variables. The projection onto the original explanatory variables serves as an analog of effect sizes. The specific function…
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Taxonomy
TopicsGene expression and cancer classification · Genetic and phenotypic traits in livestock · Bayesian Methods and Mixture Models
