2008
DOI: 10.1002/cjs.5550360308
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Nonparametric adaptive likelihood weights

Abstract: Abstract:The weighted likelihood can be used to make inference about one population when data from similar populations are available. The author shows heuristically that the weighted likelihood can be seen as a special case of the entropy maximization principle. This leads him to propose the minimum averaged mean squared error (MAMSE) weights. He describes an algorithm for calculating these weights and shows its convergence using the Kuhn-Tucker conditions. He explores the performance and properties of the wei… Show more

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Cited by 9 publications
(15 citation statements)
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“…, C m is identical to C 1 . This behaviour is observed and discussed with other versions of the MAMSE weights in Plante (2008Plante ( , 2009a. The study of the asymptotic distribution of √ N k Ĉ μ k − C 1 would require a description of the similarities between the C i , an endeavour that will not be undertaken in this paper.…”
Section: Theorem 3 We Have Uniform Convergence Of the Mamse-weighted mentioning
confidence: 94%
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“…, C m is identical to C 1 . This behaviour is observed and discussed with other versions of the MAMSE weights in Plante (2008Plante ( , 2009a. The study of the asymptotic distribution of √ N k Ĉ μ k − C 1 would require a description of the similarities between the C i , an endeavour that will not be undertaken in this paper.…”
Section: Theorem 3 We Have Uniform Convergence Of the Mamse-weighted mentioning
confidence: 94%
“…In this context, adaptive weights can trade potential bias for reduced variance. We therefore extend the MAMSE weights of Plante (2008Plante ( , 2009a by replacing the empirical distribution functions in their definition with empirical copulas.…”
Section: Heterogeneous Copulas: Adaptive Weightsmentioning
confidence: 99%
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