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Increasing the efficiency of Sequential Monte Carlo samplers through the use of approximately optimal L-kernels

机译:通过使用大约最佳L-ernels提高序贯蒙特卡罗采样器的效率

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摘要

By facilitating the generation of samples from arbitrary probability distributions, Markov Chain Monte Carlo (MCMC) is, arguably, the tool for the evaluation of Bayesian inference problems that yield non-standard posterior distributions. In recent years, however, it has become apparent that Sequential Monte Carlo (SMC) samplers have the potential to outperform MCMC in several ways. SMC samplers are better suited to highly parallel computing architectures and also feature various tuning parameters that are not available to MCMC. One such parameter - the 'L-kernel' - is a user-defined probability distribution that can be used to influence the efficiency of the sampler. In the current paper, the authors explain how to derive an expression for the L-kernel that minimises the variance of the estimates realised by an SMC sampler. Various approximation methods are then proposed to aid the implementation of the proposed L-kernel. The improved performance of the resulting algorithm is demonstrated in multiple scenarios. For the examples shown in the current paper, the use of an approximately optimal L-kernel has reduced the variance of the SMC estimates by up to 99 % while also reducing the number of times that resampling was required by between 65% and 70%. Python code and code tests accompanying this manuscript are available through the Github repository https://github.com/plgreenLIRU/SMC_approx_optL.
机译:通过促进来自任意概率分布的样本,马尔可夫链蒙特卡罗(MCMC)可以说是可以评估产生非标准后部分布的贝叶斯推理问题的工具。然而,近年来,显而易见的是,序贯蒙特卡罗(SMC)采样器有可能以几种方式优势MCMC。 SMC采样器更适合高度平行的计算架构,并且还具有对MCMC不可用的各种调整参数。一个这样的参数 - “L-kernel” - 是用户定义的概率分布,可用于影响采样器的效率。在目前的论文中,作者解释了如何导出L-Kernel的表达式,该表达式最小化SMC采样器实现的估计的方差。然后提出各种近似方法以帮助实现提出的L-核。在多种场景中对所得算法的改进性能进行了演示。对于目前纸张中所示的示例,使用近似最佳的L-kernel的使用降低了SMC估计的方差高达99%,同时还减少了重采样需要的次数达到65%和70%。伴随此稿件的Python代码和代码测试可通过Github存储库https://github.com/plgreenliru/smc_approx_optl获得。

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