分布式网络应用的效率最优马尔可夫链

Chul-Ho Lee, Do Young Eun
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引用次数: 4

摘要

Metropolis-Hastings (MH)算法,除了用于马尔可夫链蒙特卡罗采样或模拟之外,还被广泛用于构造随机漫步,以在图上实现给定的、期望的平稳分布。应用包括基于爬行的大型图或在线社交网络采样,大规模网络数据的统计估计或推断,非结构化点对点网络中的高效搜索算法,无线传感器网络中的随机路由和移动策略,等等。尽管它的多功能性,MH算法经常导致其产生的随机游走在一些节点上的自转移,这在Peskun排序(两个不同马尔可夫链的转移矩阵的非对角元素之间的偏序)的意义上是不有效的,反过来导致时间平均的渐近方差和预期命中时间方面的性能不足,收敛速度较慢。为了缓解这个问题,我们提出了简单而有效的分布式算法,保证在图上运行时随着时间的推移改进MH算法,并最终达到“效率最优”,同时确保始终保持相同的期望平稳分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the efficiency-optimal Markov chains for distributed networking applications
The Metropolis-Hastings (MH) algorithm, in addition to its application for Markov Chain Monte Carlo sampling or simulation, has been popularly used for constructing a random walk that achieves a given, desired stationary distribution over a graph. Applications include crawling-based sampling of large graphs or online social networks, statistical estimation or inference from massive scale of networked data, efficient searching algorithms in unstructured peer-to-peer networks, randomized routing and movement strategies in wireless sensor networks, to list a few. Despite its versatility, the MH algorithm often causes self-transitions of its resulting random walk at some nodes, which is not efficient in the sense of the Peskun ordering - a partial order between off-diagonal elements of transition matrices of two different Markov chains, and in turn results in deficient performance in terms of asymptotic variance of time averages and expected hitting times with slower speed of convergence. To alleviate this problem, we present simple yet effective distributed algorithms that are guaranteed to improve the MH algorithm over time when running on a graph, and eventually reach `efficiency-optimality', while ensuring the same desired stationary distribution throughout.
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