Title of article
Variable selection in model-based discriminant analysis
Author/Authors
Maugis، نويسنده , , C. and Celeux، نويسنده , , G. and Martin-Magniette، نويسنده , , M.-L.، نويسنده ,
Issue Information
دوفصلنامه با شماره پیاپی سال 2011
Pages
14
From page
1374
To page
1387
Abstract
A general methodology for selecting predictors for Gaussian generative classification models is presented. The problem is regarded as a model selection problem. Three different roles for each possible predictor are considered: a variable can be a relevant classification predictor or not, and the irrelevant classification variables can be linearly dependent on a part of the relevant predictors or independent variables. This variable selection model was inspired by a previous work on variable selection in model-based clustering. A BIC-like model selection criterion is proposed. It is optimized through two embedded forward stepwise variable selection algorithms for classification and linear regression. The model identifiability and the consistency of the variable selection criterion are proved. Numerical experiments on simulated and real data sets illustrate the interest of this variable selection methodology. In particular, it is shown that this well ground variable selection model can be of great interest to improve the classification performance of the quadratic discriminant analysis in a high dimension context.
Keywords
Gaussian classification models , Linear regression , BIC , Discriminant , redundant or independent variables , variable selection
Journal title
Journal of Multivariate Analysis
Serial Year
2011
Journal title
Journal of Multivariate Analysis
Record number
1565628
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