中国科学技术大学学报 ›› 2020, Vol. 50 ›› Issue (2): 163-175.DOI: 10.3969/j.issn.0253-2778.2020.02.012

• 论著 • 上一篇    下一篇

基于硬阈值惩罚函数的高维降秩回归

徐洪鸣   

  1. 中国科学技术大学管理学院统计与金融系,安徽合肥 230026
  • 收稿日期:2019-01-12 修回日期:2019-06-02 接受日期:2019-06-02 出版日期:2020-02-28 发布日期:2019-06-02
  • 作者简介:徐洪鸣,男,1995年生,硕士.研究方向:高维统计.E-mail:xuhongm@mail.ustc.edu.cn

Reduced rank regression based on hard-thresholding singular value penalization

XU Hongming   

  1. Department of Statistics and Finance, School of Management, University of Science and Technology, Hefei 230026, China
  • Received:2019-01-12 Revised:2019-06-02 Accepted:2019-06-02 Online:2020-02-28 Published:2019-06-02

摘要: 为了解决多元回归问题中高维数据的复共线性,有一种方法是构造惩罚函数,来对估计矩阵的秩进行约束,它被称为降秩回归.为了得到更精确的估计,这里考虑用硬阈值函数做奇异值惩罚函数.通过局部线性近似方法,将原本的估计转换为可计算的模型.这个新的模型是可计算的且是连续的.在模拟和真实的数据集上与其他的模型进行实验比较分析,结果表明,这种估计在大部分情况下比一些常用的降秩估计拥有更高的精度.

关键词: 硬阈值, 奇异值分解, 降秩回归模型, 奇异值惩罚

Abstract: Reduced rank estimation using penalty functions to restrict ranks of variety matrices is often used for solving the multi-collinearity of high-dimensional multivariate regression. Here a hard-thresholding singular value penalization was considered to get more efficient results. Through local linear approximate method, non-convex models were converted to computable ones. This model is computationally efficient, and the resulting solution path is continuous. Experiment results from simulation and public datasets show that this kind of reduced rank regression has better accuracy than some frequently-used ones in most situations.

Key words: hard-thresholding, singular value decomposition, reduced rank regression, singular value penalty

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