STAMINA: STochastic Approximate Model-checker for INfinite-state Analysis
Abstract
Stochastic model checking is a technique for analyzing systems that possess probabilistic characteristics. However, its scalability is limited as probabilistic models of real-world applications typically have very large or infinite state space. This paper presents a new infinite state CTMC model checker, STAMINA, with improved scalability. It uses a novel state space approximation method to reduce large and possibly infinite state CTMC models to finite state representations that are amenable to existing stochastic model checkers. It is integrated with a new property-guided state expansion approach that improves the analysis accuracy. Demonstration of the tool on several benchmark examples shows promising results in terms of analysis efficiency and accuracy compared with a state-of-the-art CTMC model checker that deploys a similar approximation method.
Cite
@article{arxiv.1906.03978,
title = {STAMINA: STochastic Approximate Model-checker for INfinite-state Analysis},
author = {Thakur Neupane and Chris J. Myers and Curtis Madsen and Hao Zheng and Zhen Zhang},
journal= {arXiv preprint arXiv:1906.03978},
year = {2019}
}
Comments
CAV 2019