Clusterwise analysis for multiblock component methods

被引:0
作者
Stéphanie Bougeard
Hervé Abdi
Gilbert Saporta
Ndèye Niang
机构
[1] Anses (French agency for food,Department of Epidemiology
[2] environmental and occupational health safety),undefined
[3] The University of Texas at Dallas,undefined
[4] CEDRIC CNAM,undefined
来源
Advances in Data Analysis and Classification | 2018年 / 12卷
关键词
Multiblock component method; Clusterwise regression; Typological regression; Cluster analysis; Dimension reduction; 62H30; 62H25; 91C20;
D O I
暂无
中图分类号
学科分类号
摘要
Multiblock component methods are applied to data sets for which several blocks of variables are measured on a same set of observations with the goal to analyze the relationships between these blocks of variables. In this article, we focus on multiblock component methods that integrate the information found in several blocks of explanatory variables in order to describe and explain one set of dependent variables. In the following, multiblock PLS and multiblock redundancy analysis are chosen, as particular cases of multiblock component methods when one set of variables is explained by a set of predictor variables that is organized into blocks. Because these multiblock techniques assume that the observations come from a homogeneous population they will provide suboptimal results when the observations actually come from different populations. A strategy to palliate this problem—presented in this article—is to use a technique such as clusterwise regression in order to identify homogeneous clusters of observations. This approach creates two new methods that provide clusters that have their own sets of regression coefficients. This combination of clustering and regression improves the overall quality of the prediction and facilitates the interpretation. In addition, the minimization of a well-defined criterion—by means of a sequential algorithm—ensures that the algorithm converges monotonously. Finally, the proposed method is distribution-free and can be used when the explanatory variables outnumber the observations within clusters. The proposed clusterwise multiblock methods are illustrated with of a simulation study and a (simulated) example from marketing.
引用
收藏
页码:285 / 313
页数:28
相关论文
共 50 条
[41]   Self-paced principal component analysis [J].
Kang, Zhao ;
Liu, Hongfei ;
Li, Jiangxin ;
Zhu, Xiaofeng ;
Tian, Ling .
PATTERN RECOGNITION, 2023, 142
[42]   Bayesian principal component analysis with mixture priors [J].
Hyun Sook Oh ;
Dai-Gyoung Kim .
Journal of the Korean Statistical Society, 2010, 39 :387-396
[43]   Independent component analysis for multivariate functional data [J].
Virta, Joni ;
Li, Bing ;
Nordhausen, Klaus ;
Oja, Hannu .
JOURNAL OF MULTIVARIATE ANALYSIS, 2020, 176
[44]   An exact approach to sparse principal component analysis [J].
Farcomeni, Alessio .
COMPUTATIONAL STATISTICS, 2009, 24 (04) :583-604
[45]   Dynamic Principal Component Analysis in High Dimensions [J].
Hu, Xiaoyu ;
Yao, Fang .
JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2024, 119 (545) :308-319
[46]   Principal component analysis: a review and recent developments [J].
Jolliffe, Ian T. ;
Cadima, Jorge .
PHILOSOPHICAL TRANSACTIONS OF THE ROYAL SOCIETY A-MATHEMATICAL PHYSICAL AND ENGINEERING SCIENCES, 2016, 374 (2065)
[47]   Principal component analysis for soil contamination with PAHs [J].
Golobocanin, DD ;
Skrbic, BD ;
Miljevic, NR .
CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2004, 72 (02) :219-223
[48]   Bayesian principal component analysis with mixture priors [J].
Oh, Hyun Sook ;
Kim, Dai-Gyoung .
JOURNAL OF THE KOREAN STATISTICAL SOCIETY, 2010, 39 (03) :387-396
[49]   Principal component analysis of speech spectrogram images [J].
Pinkowski, B .
PATTERN RECOGNITION, 1997, 30 (05) :777-787
[50]   An exact approach to sparse principal component analysis [J].
Alessio Farcomeni .
Computational Statistics, 2009, 24 :583-604