Regularized Multivariate Analysis Framework for Interpretable High-Dimensional Variable Selection

被引:9
|
作者
Munoz-Romero, Sergio [1 ]
Gomez-Verdejo, Vanessa [2 ]
Arenas-Garcia, Jernimo [2 ]
机构
[1] Univ Rey Juan Carlos, Dept Signal Proc & Commun, Madrid, Spain
[2] Univ Carlos III Madrid, Dept Signal Proc & Commun, E-28903 Getafe, Spain
关键词
SPARSE; REGRESSION;
D O I
10.1109/MCI.2016.2601701
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Multivariate Analysis (MVA) comprises a family of well-known methods for feature extraction which exploit correlations among input variables representing the data. One important property that is enjoyed by most such methods is uncorrelation among the extracted features. Recently, regularized versions of MVA methods have appeared in the literature, mainly with the goal to gain interpretability of the solution. In these cases, the solutions can no longer be obtained in a closed manner, and more complex optimization methods that rely on the iteration of two steps are frequently used. This paper recurs to an alternative approach to solve efficiently this iterative problem. The main novelty of this approach lies in preserving several properties of the original methods, most notably the uncorrelation of the extracted features. Under this framework, we propose a novel method that takes advantage of the,2,1 norm to perform variable selection during the feature extraction process. Experimental results over different problems corroborate the advantages of the proposed formulation in comparison to state of the art formulations.
引用
收藏
页码:24 / 35
页数:12
相关论文
共 50 条
  • [41] An improved variable selection procedure for adaptive Lasso in high-dimensional survival analysis
    Kevin He
    Yue Wang
    Xiang Zhou
    Han Xu
    Can Huang
    Lifetime Data Analysis, 2019, 25 : 569 - 585
  • [42] Interpretable Approximation of High-Dimensional Data
    Potts, Daniel
    Schmischke, Michael
    SIAM JOURNAL ON MATHEMATICS OF DATA SCIENCE, 2021, 3 (04): : 1301 - 1323
  • [43] Framework of Meta-Heuristic Variable Length Searching for Feature Selection in High-Dimensional Data
    Saraf, Tara Othman Qadir
    Fuad, Norfaiza
    Taujuddin, Nik Shahidah Afifi Md
    COMPUTERS, 2023, 12 (01)
  • [44] Lasso penalized model selection criteria for high-dimensional multivariate linear regression analysis
    Katayama, Shota
    Imori, Shinpei
    JOURNAL OF MULTIVARIATE ANALYSIS, 2014, 132 : 138 - 150
  • [45] On constrained and regularized high-dimensional regression
    Xiaotong Shen
    Wei Pan
    Yunzhang Zhu
    Hui Zhou
    Annals of the Institute of Statistical Mathematics, 2013, 65 : 807 - 832
  • [46] On constrained and regularized high-dimensional regression
    Shen, Xiaotong
    Pan, Wei
    Zhu, Yunzhang
    Zhou, Hui
    ANNALS OF THE INSTITUTE OF STATISTICAL MATHEMATICS, 2013, 65 (05) : 807 - 832
  • [47] Regularized estimation in sparse high-dimensional multivariate regression, with application to a DNA methylation study
    Zhang, Haixiang
    Zheng, Yinan
    Yoon, Grace
    Zhang, Zhou
    Gao, Tao
    Joyce, Brian
    Zhang, Wei
    Schwartz, Joel
    Vokonas, Pantel
    Colicino, Elena
    Baccarelli, Andrea
    Hou, Lifang
    Liu, Lei
    STATISTICAL APPLICATIONS IN GENETICS AND MOLECULAR BIOLOGY, 2017, 16 (03) : 159 - 171
  • [48] Variable selection and estimation for high-dimensional spatial autoregressive models
    Cai, Liqian
    Maiti, Tapabrata
    SCANDINAVIAN JOURNAL OF STATISTICS, 2020, 47 (02) : 587 - 607
  • [49] Consistent significance controlled variable selection in high-dimensional regression
    Zambom, Adriano Zanin
    Kim, Jongwook
    STAT, 2018, 7 (01):
  • [50] Variable selection in high-dimensional quantile varying coefficient models
    Tang, Yanlin
    Song, Xinyuan
    Wang, Huixia Judy
    Zhu, Zhongyi
    JOURNAL OF MULTIVARIATE ANALYSIS, 2013, 122 : 115 - 132