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Moment-Based Approximations of Distributions Using Mixtures: Theory and Applications
Authors:Bruce G. Lindsay  Ramani S. Pilla  Prasanta Basak
Affiliation:(1) Department of Statistics, 326 Classroom Building, Pennsylvania State University, University Park, PA-, 16802, U.S.A.;(2) National Institutes of Health, 6100 Executive Blvd., Room 7B-13, MSC 7510, Bethesda, MD, 20892-7510, U.S.A.;(3) 120 Eiche Library, The Pennsylvania State University, Altoona Campus, Altoona, PA-, 16601, U.S.A
Abstract:There are a number of cases where the moments of a distribution are easily obtained, but theoretical distributions are not available in closed form. This paper shows how to use moment methods to approximate a theoretical univariate distribution with mixtures of known distributions. The methods are illustrated with gamma mixtures. It is shown that for a certain class of mixture distributions, which include the normal and gamma mixture families, one can solve for a p-point mixing distribution such that the corresponding mixture has exactly the same first 2p moments as the targeted univariate distribution. The gamma mixture approximation to the distribution of a positive weighted sums of independent central chi2 variables is demonstrated and compared with a number of existing approximations. The numerical results show that the new approximation is generally superior to these alternatives.
Keywords:Cumulants  cumulative distribution function  gamma mixtures  mixture distribution  moment matrix  p-point mixture  tail probability  weighted sums of chi-squares
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