Abstraction and Learning for Infinite-State Compositional Verification
Abstract
Despite many advances that enable the application of model checking techniques to the verification of large systems, the state-explosion problem remains the main challenge for scalability. Compositional verification addresses this challenge by decomposing the verification of a large system into the verification of its components. Recent techniques use learning-based approaches to automate compositional verification based on the assume-guarantee style reasoning. However, these techniques are only applicable to finite-state systems. In this work, we propose a new framework that interleaves abstraction and learning to perform automated compositional verification of infinite-state systems. We also discuss the role of learning and abstraction in the related context of interface generation for infinite-state components.
Cite
@article{arxiv.1309.5140,
title = {Abstraction and Learning for Infinite-State Compositional Verification},
author = {Dimitra Giannakopoulou and Corina S. Păsăreanu},
journal= {arXiv preprint arXiv:1309.5140},
year = {2013}
}
Comments
In Proceedings Festschrift for Dave Schmidt, arXiv:1309.4557