正态混合似然的EM算法

C. Viwatwongkasem
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引用次数: 3

摘要

本研究的目的是使用期望最大化(EM)算法来寻找正常混合模型下的最大似然估计(MLEs),其中允许多节点、偏斜、长尾和/或污染分布形式的异质性。说明了2013年泰国所有研究省份在地图上显示的艾滋病毒/艾滋病地理数据的标准化发病率(SMR)的动机应用。结果表明,正态混合模型能很好地拟合出与EM算法相对应的较好的极大值,具有较好的收敛性和较好的局部最大值估计。EM算法的另一个优点是在解决数据不完整的问题时,将属于正态混合成分的每个研究省的潜在未观察概率相加,而其他算法如Newton-Raphson和Fisher Scoring无法增加未观察到的缺失数据。然而,EM算法的收敛速度较慢。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EM Algorithm for Normal Mixture Likelihoods
The purpose of the study is to use the expectation-maximization (EM) algorithm for finding the maximum likelihood estimates (MLEs) under the normal mixture models in which allow heterogeneity in forms of the multi-nodes, skewed, long-tailed, and/or contaminated distributions. The motivational application of the standardized morbidity ratio (SMR) of geographical HIV/AIDS data displaying on a map among all study provinces in Thailand 2013 is illustrated. The results showed that the normal mixture model fitted data well with the nice MLEs corresponding to the EM algorithm coping with good yielding both numerically stable convergence and the fine estimates of local maximum points. Another advantage of EM algorithm was in adding up the latent unobserved probabilities of each study province belonging to the component of normal mixture in solving the problem of the incomplete data while other algorithms, such as Newton-Raphson and Fisher Scoring, couldn't be able to augment those unobserved missing data. However, EM algorithm seemed to have slow convergence.
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