A sparse empirical Bayes approach to high-dimensional Gaussian process-based varying coefficient models

Myungjin Kim, Gyuhyeong Goh

STAT(2024)

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摘要
Despite the increasing importance of high-dimensional varying coefficient models, the study of their Bayesian versions is still in its infancy. This paper contributes to the literature by developing a sparse empirical Bayes formulation that addresses the problem of high-dimensional model selection in the framework of Bayesian varying coefficient modelling under Gaussian process (GP) priors. To break the computational bottleneck of GP-based varying coefficient modelling, we introduce the low-cost computation strategy that incorporates linear algebra techniques and the Laplace approximation into the evaluation of the high-dimensional posterior model distribution. A simulation study is conducted to demonstrate the superiority of the proposed Bayesian method compared to an existing high-dimensional varying coefficient modelling approach. In addition, its applicability to real data analysis is illustrated using yeast cell cycle data.
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关键词
Bayesian model selection,Gaussian process (GP) priors,high-dimensional data analysis,varying coefficient models
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