Non-deterministic weighted automata evaluated over Markov chains

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摘要

We present the first study of non-deterministic weighted automata under probabilistic semantics. In this semantics words are random events, generated by a Markov chain, and functions computed by weighted automata are random variables. We consider the probabilistic questions of computing the expected value and the cumulative distribution for such random variables.The exact answers to the probabilistic questions for non-deterministic automata can be irrational and are uncomputable in general. To overcome this limitation, we propose approximation algorithms for the probabilistic questions, which work in exponential time in the size of the automaton and polynomial time in the size of the Markov chain and the given precision. We apply this result to show that non-deterministic automata can be effectively determinised with respect to the standard deviation metric.

论文关键词:Quantitative verification,Weighted automata,Expected value

论文评审过程:Received 28 February 2019, Revised 12 August 2019, Accepted 8 October 2019, Available online 25 October 2019, Version of Record 14 November 2019.

论文官网地址:https://doi.org/10.1016/j.jcss.2019.10.001