On minimizing chi-square distances under the hypothesis of homogeneity or independence for a two-way contingency table (Q1083804)
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scientific article; zbMATH DE number 3978168
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | On minimizing chi-square distances under the hypothesis of homogeneity or independence for a two-way contingency table |
scientific article; zbMATH DE number 3978168 |
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On minimizing chi-square distances under the hypothesis of homogeneity or independence for a two-way contingency table (English)
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1986
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The present paper investigates estimation under the hypothesis of homogeneity or independence for a two-way contingency table. A family of optimality criteria (distances) is introduced of which well-known criteria such as maximum likelihood, Pearson- and Neyman chi-square, the Kullback-Leibler distance turn out to be special cases. We look at the convexity properties of this family and provide some general results. Given any member of this family, an analytical solution is provided for the optimal estimator under the hypothesis of homogeneity whereas a simple algorithm solution is given for the optimal row- and column margin estimators under the hypothesis of independence.
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minimum distance estimators
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estimation
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hypothesis of homogeneity or independence
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two-way contingency table
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optimality criteria
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maximum likelihood
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Pearson- and Neyman chi-square
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Kullback-Leibler distance
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convexity properties
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algorithm
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optimal row- and column margin estimators
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