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The one-step-late PXEM algorithm

机译:一站式PXEM算法

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The EM algorithm is a popular method for computing maximum likelihood estimates or posterior modes in models that can be formulated in terms of missing data or latent structure. Although easy implementation and stable convergence help to explain the popularity of the algorithm, its convergence is sometimes notoriously slow. In recent years, however, various adaptations have significantly improved the speed of EM while maintaining its stability and simplicity. One especially successful method for maximum likelihood is known as the parameter expanded EM or PXEM algorithm. Unfortunately, PXEM does not generally have a closed form M-step when computing posterior modes, even when the corresponding EM algorithm is in closed form. In this paper we confront this problem by adapting the one-step-late EM algorithm to PXEM to establish a fast closed form algorithm that improves on the one-step-late EM algorithm by insuring monotone convergence. We use this algorithm to fit a probit regression model and a variety of dynamic linear models, showing computational savings of as much as 99.9%, with the biggest savings occurring when the EM algorithm is the slowest to converge.
机译:EM算法是一种流行的方法,用于计算模型中的最大似然估计或后验模式,该模型可以根据缺失数据或潜在结构来制定。尽管简单的实现和稳定的收敛有助于解释该算法的普及性,但是众所周知,其收敛速度仍然很慢。但是,近年来,各种改编已大大提高了EM的速度,同时又保持了其稳定性和简单性。一种用于最大可能性的特别成功的方法是参数扩展EM或PXEM算法。不幸的是,即使计算相应的EM算法为封闭形式,PXEM在计算后验模式时通常也没有封闭形式的M步骤。在本文中,我们通过将一步一步的EM算法应用于PXEM来建立快速闭合形式的算法,以确保单调收敛来改进一步一步的EM算法,从而解决了这一问题。我们使用此算法拟合概率回归模型和各种动态线性模型,显示出高达99.9%的计算节省,而当EM算法收敛速度最慢时,节省的金额最大。

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