区间马尔可夫链的重要性抽样

Cyrille Jégourel, Jingyi Wang, Jun Sun
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引用次数: 3

摘要

在现实世界的系统中,罕见事件通常表征关键情况,如系统在一定时间范围内发生故障的概率,它们被用于对安全关键系统可靠性中的一些潜在有害场景进行建模。概率模型检验已被用于验证各种类型系统的可靠性,但受到状态空间爆炸问题的限制。另一种方法是求助于统计模型检查(SMC),它依赖于蒙特卡罗模拟,并在预定义的误差和置信范围内提供估计。然而,稀有属性在至少一次出现之前需要大量的模拟。为了解决这一问题,在SMC中提出了一种针对不同类型概率系统的罕见事件模拟技术——重要抽样。重要性抽样要求对系统的概率度量有充分的了解,例如马尔可夫链。然而,在实践中,我们经常有一些不确定的模型,例如,区间马尔可夫链。本文提出了一种将重要抽样应用于区间马尔可夫链的方法。在将我们的方法应用于多个案例研究中,我们显示出有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Importance Sampling of Interval Markov Chains
In real-world systems, rare events often characterize critical situations like the probability that a system fails within some time bound and they are used to model some potentially harmful scenarios in dependability of safety-critical systems. Probabilistic Model Checking has been used to verify dependability properties in various types of systems but is limited by the state space explosion problem. An alternative is the recourse to Statistical Model Checking (SMC) that relies on Monte Carlo simulations and provides estimates within predefined error and confidence bounds. However, rare properties require a large number of simulations before occurring at least once. To tackle the problem, Importance Sampling, a rare event simulation technique, has been proposed in SMC for different types of probabilistic systems. Importance Sampling requires the full knowledge of probabilistic measure of the system, e.g. Markov chains. In practice, however, we often have models with some uncertainty, e.g., Interval Markov Chains. In this work, we propose a method to apply importance sampling to Interval Markov Chains. We show promising results in applying our method to multiple case studies.
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