Deriving Mixture Distributions Through Moment-Generating Functions

IF 1 Q3 Mathematics
S. Bagui, Jia Liu, S. Zhang
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引用次数: 0

Abstract

This article aims to make use of moment-generating functions (mgfs) to derive the density of mixture distributions from hierarchical models. When the mgf of a mixture distribution doesn’t exist, one can extend the approach to characteristic functions to derive the mixture density. This article uses a result given by E.R. Villa, L.A. Escobar, Am. Stat. 60 (2006), 75–80. The present work complements E.R. Villa, L.A. Escobar, Am. Stat. 60 (2006), 75–80 article with many new examples.
通过矩生成函数推导混合分布
本文旨在利用矩生成函数(mgfs)从分层模型中导出混合分布的密度。当混合分布的mgf不存在时,可以将该方法推广到特征函数来推导混合密度。这篇文章使用了加州洛杉矶埃斯科瓦尔的E.R.维拉给出的结果。Stat. 60(2006), 75-80。目前的工作补充E.R.维拉,洛杉矶埃斯科瓦尔,美国。Stat. 60(2006), 75-80条,有许多新的例子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
13
审稿时长
13 weeks
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