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Enhanced Mixture Population Monte Carlo Via Stochastic Optimization and Markov Chain Monte Carlo Sampling

机译:通过随机优化和马尔可夫链蒙特卡洛采样增强混合人口蒙特卡洛

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The population Monte Carlo (PMC) algorithm is a popular adaptive importance sampling (AIS) method used for approximate computation of intractable integrals. Over the years, many advances have been made in the theory and implementation of PMC schemes. The mixture PMC (M-PMC) algorithm, for instance, optimizes the parameters of a mixture proposal distribution in a way that minimizes that Kullback-Leibler divergence to the target distribution. The parameters in M-PMC are updated using a single step of expectation maximization (EM), which limits its accuracy. In this work, we introduce a novel M-PMC algorithm that optimizes the parameters of a mixture proposal distribution, where parameter updates are resolved via stochastic optimization instead of EM. The stochastic gradients w.r.t. each of the mixture parameters are approximated using a population of Markov chain Monte Carlo samplers. We validate the proposed scheme via numerical simulations on an example where the considered target distribution is multimodal.
机译:总体蒙特卡洛(PMC)算法是一种流行的自适应重要性抽样(AIS)方法,用于近似计算难解积分。多年来,PMC方案的理论和实施取得了许多进展。例如,混合PMC(M-PMC)算法以最小化Kullback-Leibler对目标分布的散度的方式优化了混合提议分布的参数。 M-PMC中的参数使用期望最大化(EM)的单个步骤进行更新,这限制了其准确性。在这项工作中,我们介绍了一种新颖的M-PMC算法,该算法可优化混合提议分配的参数,其中参数更新是通过随机优化而不是EM解决的。随机梯度w.r.t.每个混合参数使用一组马尔可夫链蒙特卡洛采样器进行近似。我们在一个考虑目标分布为多峰的例子上通过数值模拟验证了所提出的方案。

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