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Exact Multivariate Tests - A New Effective Principle of Controlled Model Choice

Authors :
Laeuter, Juergen
Rosolowski, Maciej
Glimm, Ekkehard
Publication Year :
2012

Abstract

High-dimensional tests are applied to find relevant sets of variables and relevant models. If variables are selected by analyzing the sums of products matrices and a corresponding mean-value test is performed, there is the danger that the nominal error of first kind is exceeded. In the paper, well-known multivariate tests receive a new mathematical interpretation such that the error of first kind of the combined testing and selecting procedure can more easily be kept. The null hypotheses on mean values are replaced by hypotheses on distributional sphericity of the individual score responses. Thus, model choice is possible without too strong restrictions. The method is presented for all linear multivariate designs. It is illustrated by an example from bioinformatics: The selection of gene sets for the comparison of groups of patients suffering from B-cell lymphomas.<br />Comment: 18 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1202.2045
Document Type :
Working Paper