Cumulative correspondence analysis using orthogonal polynomials

COMMUNICATIONS IN STATISTICS-THEORY AND METHODS(2017)

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摘要
Taguchi's statistic has long been known to be a more appropriate measure of association of the dependence for ordinal variables compared to the Pearson chi-squared statistic. Therefore, there is some advantage in using Taguchi's statistic in the correspondence analysis context when a two-way contingency table consists at least of an ordinal categorical variable. The aim of this paper, considering the contingency table with two ordinal categorical variables, is to show a decomposition of Taguchi's index into linear, quadratic and higher-order components. This decomposition has been developed using Emerson's orthogonal polynomials. Moreover, two case studies to explain the methodology have been analyzed.
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关键词
Cumulative correspondence analysis,generalize singular value decomposition,ordinal variables,orthogonal polynomials,Taguchi's index
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