Deciding probabilistic bisimilarity distance one for probabilistic automata

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摘要

Probabilistic bisimilarity, due to Segala and Lynch, is an equivalence relation that captures which states of a probabilistic automaton behave exactly the same. Deng et al. proposed a robust quantitative generalization of probabilistic bisimilarity. Their probabilistic bisimilarity distances of states of a probabilistic automaton capture the similarity of their behaviour. The smaller the distance, the more alike the states behave. In particular, states are probabilistic bisimilar if and only if their distance is zero. Although the complexity of computing probabilistic bisimilarity distances for probabilistic automata has already been studied, we are not aware of any practical algorithms to compute those distances. In this paper, we provide several key results towards algorithms to compute probabilistic bisimilarity distances for probabilistic automata. In particular, we present a polynomial time algorithm that decides distance one. Furthermore, we give an alternative characterization of the probabilistic bisimilarity distances as a basis for a policy iteration algorithm.

论文关键词:Probabilistic automaton,Probabilistic bisimilarity,Probabilistic bisimilarity distance

论文评审过程:Received 15 March 2019, Revised 22 October 2019, Accepted 20 February 2020, Available online 16 March 2020, Version of Record 24 March 2020.

论文官网地址:https://doi.org/10.1016/j.jcss.2020.02.003