Ju-Chi YuCAMH, Julie Le BorgneRID-AGE, CHRU Lille, Anjali KrishnanCUNY, Arnaud GloaguenCNRGH, JACOB, Cheng-Ta YangNCKU, Laura A RabinCUNY, Hervé AbdiUT Dallas, Vincent Guillemot
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引用次数: 0
Abstract
Correspondence analysis, multiple correspondence analysis and their
discriminant counterparts (i.e., discriminant simple correspondence analysis
and discriminant multiple correspondence analysis) are methods of choice for
analyzing multivariate categorical data. In these methods, variables are
integrated into optimal components computed as linear combinations whose
weights are obtained from a generalized singular value decomposition (GSVD)
that integrates specific metric constraints on the rows and columns of the
original data matrix. The weights of the linear combinations are, in turn, used
to interpret the components, and this interpretation is facilitated when
components are 1) pairwise orthogonal and 2) when the values of the weights are
either large or small but not intermediate-a pattern called a simple or a
sparse structure. To obtain such simple configurations, the optimization
problem solved by the GSVD is extended to include new constraints that
implement component orthogonality and sparse weights. Because multiple
correspondence analysis represents qualitative variables by a set of binary
variables, an additional group constraint is added to the optimization problem
in order to sparsify the whole set representing one qualitative variable. This
new algorithm-called group-sparse GSVD (gsGSVD)-integrates these constraints
via an iterative projection scheme onto the intersection of subspaces where
each subspace implements a specific constraint. In this paper, we expose this
new algorithm and show how it can be adapted to the sparsification of simple
and multiple correspondence analysis, and illustrate its applications with the
analysis of four different data sets-each illustrating the sparsification of a
particular CA-based analysis.