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Geom-Spider-EM: Faster Variance Reduced Stochastic Expectation Maximization for Nonconvex Finite-Sum Optimization

机译:Geom-Spider-em:更快的方差降低了非渗透有限和优化的随机期望最大化

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摘要

The Expectation Maximization (EM) algorithm is a key reference for inference in latent variable models; unfortunately, its computational cost is prohibitive in the large scale learning setting. In this paper, we propose an extension of the Stochastic Path-Integrated Differential EstimatoR EM (SPIDER-EM) and derive complexity bounds for this novel algorithm, designed to solve smooth nonconvex finite-sum optimization problems. We show that it reaches the same state of the art complexity bounds as SPIDER-EM; and provide conditions for a linear rate of convergence. Numerical results support our findings.
机译:期望最大化(EM)算法是潜伏变量模型中推断的关键参考; 不幸的是,其计算成本在大规模学习环境中是持久的。 在本文中,我们提出了随机路径集成差分估计器EM(SPIDER-EM)的扩展,并为该新颖算法推导了复杂性界限,旨在解决平滑的非凸显有限和优化问题。 我们表明它达到了与蜘蛛界相同的艺术复杂性界定的状态; 并提供线性收敛速率的条件。 数值结果支持我们的研究结果。

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