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基于分区经验贝叶斯ECM算法的高效稀疏高维线性回归

Efficient sparse high-dimensional linear regression with a partitioned empirical Bayes ECM algorithm

Computational Statistics and Data Analysis · 2025
被引 2
ABS 3

中文导读

提出一种名为PROBE的计算高效贝叶斯方法,用于稀疏高维线性回归,通过分区经验贝叶斯ECM算法估计参数,并在模拟和癌症药物反应数据中验证性能。

Abstract

Bayesian variable selection methods are powerful techniques for fitting sparse high-dimensional linear regression models. However, many are computationally intensive or require restrictive prior distributions on model parameters. A computationally efficient and powerful Bayesian approach is presented for sparse high-dimensional linear regression, requiring only minimal prior assumptions on parameters through plug-in empirical Bayes estimates of hyperparameters. The method employs a Parameter-Expanded Expectation-Conditional-Maximization (PX-ECM) algorithm to estimate maximum a posteriori (MAP) values of parameters via computationally efficient coordinate-wise optimization. The popular two-group approach to multiple testing motivates the E-step, resulting in a PaRtitiOned empirical Bayes Ecm (PROBE) algorithm for sparse high-dimensional linear regression. Both one-at-a-time and all-at-once optimization can be used to complete PROBE. Extensive simulation studies and analyses of cancer cell drug responses are conducted to compare PROBE's empirical properties with those of related methods. Implementation is available through the R package probe .

贝叶斯统计高维数据变量选择线性回归计算算法