论文标题
快速混合多种尝试的大都市算法,以解决模型选择问题
Rapidly Mixing Multiple-try Metropolis Algorithms for Model Selection Problems
论文作者
论文摘要
多种尝试的大都市(MTM)算法是通过根据某些重量函数在多个试验中选择拟议状态的大都市束缚(MH)算法的扩展。尽管MTM比标准MH算法更快地获得了经验融合和混合,因此获得了广泛的知名度,但由于其复杂的建议方案,很少研究其理论混合性能。我们证明,MTM可以实现小于MH的混合时间,这是在适用于具有离散状态空间的高维模型选择问题的一般设置下的试验数量的因素。我们的理论结果激发了一种称为局部平衡重量功能的新的重量功能,并指导了试验数量的选择,这导致比标准MTM算法的性能提高。我们通过广泛的模拟研究和实际数据应用程序来支持我们的理论结果,并具有多种贝叶斯模型选择问题。
The multiple-try Metropolis (MTM) algorithm is an extension of the Metropolis-Hastings (MH) algorithm by selecting the proposed state among multiple trials according to some weight function. Although MTM has gained great popularity owing to its faster empirical convergence and mixing than the standard MH algorithm, its theoretical mixing property is rarely studied in the literature due to its complex proposal scheme. We prove that MTM can achieve a mixing time bound smaller than that of MH by a factor of the number of trials under a general setting applicable to high-dimensional model selection problems with discrete state spaces. Our theoretical results motivate a new class of weight functions called locally balanced weight functions and guide the choice of the number of trials, which leads to improved performance over standard MTM algorithms. We support our theoretical results by extensive simulation studies and real data applications with several Bayesian model selection problems.