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Disjoint decomposition sampling circuits of Markov chains and in Cayley graphs

机译:马尔可夫链和Cayley图的不相交分解采样电路

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摘要

Markov chain decomposition is it tool for analysing the convergence rate of a complicated Markov chain by studying its behaviour on smaller, more manageable pieces of the state space. Roughly speaking, if a Markov chain converges quickly to equilibrium when restricted to subsets of the state space, and if there is sufficient ergodic flow between the pieces, then the original Markov chain also must converge rapidly to equilibrium. We present a new version of the decomposition theorem where the pieces partition the state space, rather than forming a cover where pieces overlap, as was previously required. This new formulation is more natural and better suited to many applications. We apply this disjoint decomposition method to demonstrate the efficiency of simple Markov chains designed to uniformly sample circuits of a given length on certain Cayley graphs. The proofs further indicate that a Markov chain for sampling adsorbing staircase walks, a problem arising in statistical physics, is also rapidly mixing.
机译:马尔可夫链分解是通过研究状态空间较小,更易于管理的行为来分析复杂马尔可夫链收敛速度的工具。粗略地讲,如果当限制状态空间的子集时,马尔可夫链快速收敛到平衡,并且如果各部分之间有足够的遍历流动,那么原始的马尔可夫链也必须迅速收敛到平衡。我们提出了分解定理的新版本,其中各个部分划分了状态空间,而不是像以前所要求的那样形成多个部分重叠的覆盖。这种新配方更自然,更适合许多应用。我们使用这种不相交的分解方法来证明简单的马尔可夫链的效率,该马尔可夫链设计用于在某些Cayley图上均匀采样给定长度的电路。证据还表明,用于采样吸附式阶梯步道的马尔可夫链(统计物理中出现的问题)也在迅速混合。

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