Strong consistency of the MLE under two-parameter Gamma mixture models with a structural scale parameter

被引:0
作者
Mingxing He
Jiahua Chen
机构
[1] Yunnan University,Yunnan Key Laboratory of Statistical Modeling and Data Analysis
[2] Yunnan University,School of Mathematics and Statistics
[3] University of British Columbia,Department of Statistics
来源
Advances in Data Analysis and Classification | 2022年 / 16卷
关键词
EM algorithm; Finite Gamma mixture model; Maximum likelihood estimator; Strong consistency; Structural parameter; 62H30; 62H25;
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中图分类号
学科分类号
摘要
We study the strong consistency of the maximum likelihood estimator under a special finite mixture of two-parameter Gamma distributions. Somewhat surprisingly, the likelihood function under Gamma mixture with a set of independent and identically distributed observations is unbounded. There exist many sets of nonsensical parameter values at which the likelihood value is arbitrarily large. This leads to an inconsistent, or arguably undefined, maximum likelihood estimator. Interestingly, when the scale or shape parameter in the finite Gamma mixture model is structural, the maximum likelihood estimator of the mixing distribution is well defined and strongly consistent. Establishing the consistency when the shape parameter is structural is technically less challenging and already given in the literature. In this paper, we prove the consistency when the scale parameter is structural and provide some illustrative simulation experiments. We further include an application example of the model with a structural scale parameter to salary potential data. We conclude that the Gamma mixture distribution with a structural scale parameter provides another flexible yet relatively parsimonious model for observations with intrinsic positive values.
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页码:125 / 154
页数:29
相关论文
共 65 条
  • [1] Chen J(1995)Optimal rate of convergence for finite mixture models Ann Stat 23 221-233
  • [2] Chen J(1998)Penalized likelihood-ratio test for finite mixture models with multinomial observations Can J Stat 26 583-599
  • [3] Chen J(2017)Consistency of the MLE under mixture models Stat Sci 32 47-63
  • [4] Chen H(2003)Tests for homogeneity in normal mixtures in the presence of a structural parameter Stat Sin 13 351-365
  • [5] Chen J(2009)Inference for multivariate normal mixtures J Multivar Anal 100 1367-1383
  • [6] Chen J(2008)Inference for normal mixtures in mean and variance Stat Sin 18 443-465
  • [7] Tan X(2016)Consistency of the penalized MLE for two-parameter gamma mixture models Sci China Math 59 2301-2318
  • [8] Chen J(2020)Homogeneity testing under finite location-scale mixtures Can J Stat 48 670-684
  • [9] Tan X(2003)Penalized maximum likelihood estimator for normal mixtures Scand J Stat 30 45-59
  • [10] Zhang R(1977)Maximum likelihood from incomplete data via the EM algorithm J R Stat Soc B 39 1-38