Fast Computation of the EM Algorithm for Mixture Models

M. Kuroda
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引用次数: 1

Abstract

Mixture models become increasingly popular due to their modeling flexibility and are applied to the clustering and classification of heterogeneous data. The EM algorithm is largely used for the maximum likelihood estimation of mixture models because the algorithm is stable in convergence and simple in implementation. Despite such advantages, it is pointed out that the EM algorithm is local and has slow convergence as the main drawback. To avoid the local convergence of the EM algorithm, multiple runs from several different initial values are usually used. Then the algorithm may take a large number of iterations and long computation time to find the maximum likelihood estimates. The speedup of computation of the EM algorithm is available for these problems. We give the algorithms to accelerate the convergence of the EM algorithm and apply them to mixture model estimation. Numerical experiments examine the performance of the acceleration algorithms in terms of the number of iterations and computation time.
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混合模型EM算法的快速计算
混合模型由于其建模的灵活性越来越受到人们的欢迎,并被广泛应用于异构数据的聚类和分类。EM算法具有收敛稳定、实现简单等优点,被广泛用于混合模型的最大似然估计。尽管有这些优点,但EM算法的主要缺点是局部性和收敛速度慢。为了避免EM算法的局部收敛,通常使用多个不同的初始值进行多次运行。该算法可能需要大量的迭代和较长的计算时间才能找到最大的似然估计。对于这些问题,EM算法的计算速度加快是可行的。给出了加速EM算法收敛的算法,并将其应用于混合模型估计。数值实验从迭代次数和计算时间两方面检验了加速算法的性能。
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