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MM algorithms for some discrete multivariate distributions

机译:某些离散多元分布的MM算法

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摘要

The MM (minorization-maximization) principle is a versatile tool for constructing optimization algorithms. Every EM algorithm is an MM algorithm but not vice versa. This article derives MM algorithms for maximum likelihood estimation with discrete multivariate distributions such as the Dirichlet-multinomial and Connor-Mosimann distributions, the Neerchal-Morel distribution, the negative-multinomial distribution, certain distributions on partitions, and zero-truncated and zero-inflated distributions. These MM algorithms increase the likelihood at each iteration and reliably converge to the maximum from well-chosen initial values. Because they involve no matrix inversion, the algorithms are especially pertinent to high-dimensional problems. To illustrate the performance of the MM algorithms, we compare them to Newton's method on data used to classify handwritten digits.
机译:MM(最小化-最大化)原理是用于构造优化算法的通用工具。每个EM算法都是MM算法,但反之亦然。本文推导了使用离散多元分布(例如Dirichlet多项式和Connor-Mosimann分布,Neerchal-Morel分布,负多项式分布,分区上的某些分布以及零截断和零膨胀)进行最大似然估计的MM算法分布。这些MM算法增加了每次迭代的可能性,并可靠地从精心选择的初始值收敛到最大值。因为它们不涉及矩阵求逆,所以这些算法尤其与高维问题有关。为了说明MM算法的性能,我们将它们与用于分类手写数字的数据的牛顿方法进行了比较。

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