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[SJM+24] | Ocan Sankur,
Thierry Jéron,
Nicolas Markey,
David Mentré, and
Reiya Noguchi.
Online Test Synthesis From Requirements: Enhancing
Reinforcement Learning with Game Theory.
Technical Report 2407-18994, arXiv, July 2024.
@techreport{2407.18994-SJMMN, author = {Sankur, Ocan and J{\'e}ron, Thierry and Markey, Nicolas and Mentr{\'e}, David and Noguchi, Reiya}, title = {Online Test Synthesis From Requirements: Enhancing Reinforcement Learning with Game Theory}, number = {2407-18994}, year = {2024}, month = jul, doi = {10.48550/arXiv.2407-18994}, institution = {arXiv}, abstract = {We consider the automatic online synthesis of black-box test cases from functional requirements specified as automata for reactive implementations. The goal of the tester is to reach some given state, so as to satisfy a coverage criterion, while monitoring the violation of the requirements. We develop an approach based on Monte~Carlo Tree Search, which is a classical technique in reinforcement learning for efficiently selecting promising inputs. Seeing the automata requirements as a game between the implementation and the tester, we develop a heuristic by biasing the search towards inputs that are promising in this game. We~experimentally show that our heuristic accelerates the convergence of the Monte~Carlo Tree Search algorithm, thus improving the performance of testing.}, } |
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