如何使用只读一次的随机性源从过去进行耦合

D. Wilson
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引用次数: 109

摘要

给出了一种从马尔可夫链的平稳分布生成完全随机样本的新方法。该方法与过去耦合(CFTP)有关,但只在时间上向前运行马尔可夫链,而不会在过去的先前时间重新启动它。该方法也与运筹学文献中的PASTA(泊松到达见时间平均值)概念有关。因为新算法可以使用一次读的随机流来运行,所以我们称之为一次读的CFTP。一次读取的CFTP对内存和时间的需求与通常形式的CFTP的需求相当,而且对于各种应用程序,需求可能明显更少。一些完美的点过程采样算法是基于CFTP的扩展,称为过去耦合;为了完整起见,我们给出了过去和过去耦合的一次读取版本,但它仍然不实用。对于这些点进程应用程序,我们给出了一种可选的耦合方法,该方法可以有效地使用只读一次的CFTP。
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How to couple from the past using a read-once source of randomness
We give a new method for generating perfectly random samples from the stationary distribution of a Markov chain. The method is related to coupling from the past (CFTP), but only runs the Markov chain forwards in time, and never restarts it at previous times in the past. The method is also related to an idea known as PASTA (Poisson arrivals see time averages) in the operations research literature. Because the new algorithm can be run using a read-once stream of randomness, we call it read-once CFTP. The memory and time requirements of read-once CFTP are on par with the requirements of the usual form of CFTP, and for a variety of applications the requirements may be noticeably less. Some perfect sampling algorithms for point processes are based on an extension of CFTP known as coupling into and from the past; for completeness, we give a read-once version of coupling into and from the past, but it remains unpractical. For these point process applications, we give an alternative coupling method with which read-once CFTP may be efficiently used.
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