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Fast ML Estimation for the Mixture of Factor Analyzers via an ECM Algorithm

机译:通过ECM算法对因子分析仪混合物进行快速ML估计

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摘要

In this brief, we propose a fast expectation conditional maximization (ECM) algorithm for maximum-likelihood (ML) estimation of mixtures of factor analyzers (MFA). Unlike the existing expectation–maximization (EM) algorithms such as the EM in Ghahramani and Hinton, 1996, and the alternating ECM (AECM) in McLachlan and Peel, 2003, where the missing data contains component–indicator vectors as well as latent factors, the missing data in our ECM consists of component–indicator vectors only. The novelty of our algorithm is that closed-form expressions in all conditional maximization (CM) steps are obtained explicitly, instead of resorting to numerical optimization methods. As revealed by experiments, the convergence of our ECM is substantially faster than EM and AECM regardless of whether assessed by central processing unit (CPU) time or number of iterations.
机译:在本文中,我们提出了一种快速期望条件最大化(ECM)算法,用于因子分析器(MFA)混合物的最大似然(ML)估计。与现有的期望最大化(EM)算法(例如Ghahramani和Hinton,1996年的EM,以及McLachlan和Peel,2003年的交替ECM(AECM),其中缺失的数据包含成分指标向量和潜在因子不同, ECM中缺少的数据仅由成分指标向量组成。我们算法的新颖之处在于,可以显式获得所有条件最大化(CM)步骤中的闭式表达式,而不是采用数值优化方法。正如实验所揭示的,无论是通过中央处理器(CPU)时间还是迭代次数评估,​​我们的ECM的收敛速度都比EM和AECM快得多。

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