Informed Markov chain Monte Carlo (MCMC) methods have been proposed as scalable solutions to Bayesian posterior computation on high-dimensional discrete state spaces, but theoretical results about their convergence behavior in general settings are lacking. In this article, we propose a class of MCMC schemes called informed importance tempering (IIT), which combine importance sampling and informed local proposals, and derive generally applicable spectral gap bounds for IIT estimators. Our theory shows that IIT samplers have remarkable scalability when the target posterior distribution concentrates on a small set. Further, both our theory and numerical experiments demonstrate that the informed proposal should be chosen with caution: the performance of some proposals may be very sensitive to the shape of the target distribution. We find that the "square-root proposal weighting" scheme tends to perform well in most settings.
翻译:马可夫知情链蒙特卡洛(MMC)方法被提议为在高维离散状态空间进行巴伊西亚后方计算时可推广的解决方案,但缺乏关于一般情况下其趋同行为的理论结果。在本篇文章中,我们建议了一组称为知情重要性调和(IIT)的MC计划,该计划将重要取样和知情的当地建议结合起来,并为IIT测量员得出普遍适用的光谱差距界限。我们的理论表明,当目标后方分布集中在小块区域时,IIT采样器具有显著的可伸缩性。此外,我们的理论和数字实验都表明,明智的建议应该谨慎地选择:一些提案的绩效可能对目标分布的形状非常敏感。我们发现,在多数情况下,“平面建议加权”计划往往效果良好。