Efficient Sparse Reduced-Rank Regression With Covariance Estimation

Fengpei Li, Ziping Zhao
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引用次数: 0

Abstract

Multivariate linear regression is a fundamental model widely used in many fields of signal processing and machine learning. To enhance its interpretability and predicting performance, many approaches have been developed. Among them, the sparse reduced-rank regression with covariance estimation (SRRRCE) method has been shown to be promising. SRRRCE is powerful, which jointly considers the dimension reduction and variable selection of the regression coefficient, as well as a covariance selection target. In this paper, we will propose a new optimization formulation for SRRRCE by modifying the variable coupling constraint in the existing formulation. For efficient problem solving, a convergent single-loop algorithm based on the block majorization-minimization algorithmic framework is developed. Numerical experiments demonstrate the proposed estimation method possesses better prediction performance and faster convergence speed compared to the existing one.
基于协方差估计的高效稀疏降秩回归
多元线性回归是一个基本模型,广泛应用于信号处理和机器学习的许多领域。为了提高其可解释性和预测性能,人们开发了许多方法。其中,稀疏降秩回归与协方差估计(SRRRCE)方法已被证明是有前途的。SRRRCE是强大的,它联合考虑了回归系数的降维和变量选择,以及协方差选择目标。在本文中,我们将通过修改现有公式中的变量耦合约束,提出一种新的SRRRCE优化公式。为了有效地求解问题,提出了一种基于块最大化-最小化算法框架的收敛单环算法。数值实验表明,与现有估计方法相比,该估计方法具有更好的预测性能和更快的收敛速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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