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Convergence of the Monte Carlo expectation maximization for curved exponential families

机译:弯曲指数族的蒙特卡洛期望最大值的收敛性

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The Monte Carlo expectation maximization (MCEM) algorithm is a versatile tool for inference in incomplete data models, especially when used in combination with Markov chain Monte Carlo simulation methods. In this contribution, the almost-sure convergence of the MCEM algorithm is established. It is shown, using uniform versions of ergodic theorems for Markov chains, that MCEM converges under weak conditions on the simulation kernel. Practical illustrations are presented, using a hybrid random walk Metropolis Hastings sampler and an independence sampler. The rate of convergence is studied, showing the impact of the simulation schedule on the fluctuation of the parameter estimate at the convergence. A novel averaging procedure is then proposed to reduce the simulation variance and increase the rate of convergence. [References: 28]
机译:蒙特卡洛期望最大化(MCEM)算法是一种用于推断不完整数据模型的通用工具,尤其是当与马尔可夫链蒙特卡洛模拟方法结合使用时。为此,建立了MCEM算法几乎可以肯定的收敛性。使用马尔可夫链的遍历定理的统一版本显示,MCEM在弱条件下收敛于仿真内核。使用混合随机步行Metropolis Hastings采样器和独立采样器,提供了实用的插图。研究了收敛速度,显示了仿真计划对收敛时参数估计值波动的影响。然后提出了一种新颖的平均程序,以减少仿真方差并提高收敛速度。 [参考:28]

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