Empirical priors for prediction in sparse high-dimensional linear regression

被引:0
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作者
Martin, Ryan [1 ]
Tang, Yiqi [1 ]
机构
[1] Department of Statistics, North Carolina State University, 2311 Stinson Dr., Raleigh,NC,27695, United States
基金
美国国家科学基金会;
关键词
Inference engines - Numerical methods - Regression analysis - Computation theory - Sampling - Bayesian networks - Probability distributions;
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摘要
In this paper we adopt the familiar sparse, high-dimensional linear regression model and focus on the important but often overlooked task of prediction. In particular, we consider a new empirical Bayes framework that incorporates data in the prior in two ways: one is to center the prior for the non-zero regression coefficients and the other is to provide some additional regularization. We show that, in certain settings, the asymptotic concentration of the proposed empirical Bayes posterior predictive distribution is very fast, and we establish a Bernstein{von Mises theorem which ensures that the derived empirical Bayes prediction intervals achieve the targeted frequentist coverage probability. The empirical prior has a convenient conjugate form, so posterior computations are relatively simple and fast. Finally, our numerical results demonstrate the proposed method's strong finite-sample performance in terms of prediction accuracy, uncertainty quanti_cation, and computation time compared to existing Bayesian methods. © 2020 Ryan Martin and Yiqi Tang.
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