具有小转移概率的马尔可夫链的快速模拟

Fast Simulation of Markov Chains with Small Transition Probabilities

Management Science · 2001
被引 47
人大 A+FT50UTD24ABS 4*

中文导读

针对转移概率相差多个数量级的有限状态马尔可夫链,提出两种重要性抽样技术,用于估计从吸引子状态出发、在返回吸引子前击中稀有集的概率,并解决高概率循环导致方差无限的问题。

Abstract

Consider a finite-state Markov chain where the transition probabilities differ by orders of magnitude. This Markov chain has an “attractor state,” i.e., from any state of the Markov chain there exists a sample path of significant probability to the attractor state. There also exists a “rare set,” which is accessible from the attractor state only by sample paths of very small probability. The problem is to estimate the probability that starting from the attractor state, the Markov chain hits the rare set before returning to the attractor state. Examples of this setting arise in the case of reliability models with highly reliable components as well as in the case of queueing networks with low traffic. Importance-sampling is a commonly used simulation technique for the fast estimation of rare-event probabilities. It involves simulating the Markov chain under a new probability measure that emphasizes the most likely paths to the rare set. Previous research focused on developing importance-sampling schemes for a special case of Markov chains that did not include “high-probability cycles.” We show through examples that the Markov chains used to model many commonly encountered systems do have high-probability cycles, and existing importance-sampling schemes can lead to infinite variance in simulating such systems. We then develop the insight that in the presence of high-probability cycles care should be taken in allocating the new transition probabilities so that the variance accumulated over these cycles does not increase without bounds. Based on this observation we develop two importance-sampling techniques that have the bounded relative error property, i.e., the simulation run-length required to estimate the rare-event probability to a fixed degree of accuracy remains bounded as the event of interest becomes more rare.

马尔可夫链稀有事件重要性抽样高概率循环