A Proposal for a New Bound for Discrete Distributions |
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Authors: | H. Gzyl A. Tagliani |
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Affiliation: | 1. Department of Statistics , UCV and IESA , Caracas, Venezuela;2. Department of Computer and Management Sciences , University of Trento , Trento, Italy |
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Abstract: | In this work we re-examine some classical bounds for non negative integer-valued random variables by means of information theoretic or maxentropic techniques using fractional moments as constraints. The proposed new bound, no more analytically expressible in terms of moments or moment generating function (mgf), is built by mixing classical bounds and the Maximum Entropy (ME) approximant of the underlying distribution; such a new bound is able to exploit optimally all the information content provided by the sequence of given moments or by the mgf. Particular care will be devoted to obtain fractional moments from the available information given in terms of integer moments and/or moment generating function. Numerical examples show clearly that the bound improvement involving the ME approximant based on fractional moments is not trivial. |
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Keywords: | Distribution bounds Entropy Fractional moments Moments Tail probability |
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