Abstract
AbstractMoGym, is an integrated toolbox enabling the training and verification of machine-learned decision-making agents based on formal models, for the purpose of sound use in the real world. Given a formal representation of a decision-making problem in the JANI format and a reach-avoid objective, MoGym(a) enables training a decision-making agent with respect to that objective directly on the model using reinforcement learning (RL) techniques, and (b) it supports rigorous assessment of the quality of the induced decision-making agent by means of deep statistical model checking (DSMC). MoGymimplements the standard interface for training environments established by OpenAI Gym, thereby connecting to the vast body of existing work in the RL community. In return, it makes accessible the large set of existing JANI model checking benchmarks to machine learning research. It thereby contributes an efficient feedback mechanism for improving in particular reinforcement learning algorithms. The connective part is implemented on top of Momba. For the DSMC quality assurance of the learned decision-making agents, a variant of the statistical model checkermodesof the ModestToolsetis leveraged, which has been extended by two new resolution strategies for non-determinism when encountered during statistical evaluation.
Publisher
Springer International Publishing
Cited by
3 articles.
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1. Analyzing neural network behavior through deep statistical model checking;International Journal on Software Tools for Technology Transfer;2022-12-13
2. COOL-MC: A Comprehensive Tool for Reinforcement Learning and Model Checking;Dependable Software Engineering. Theories, Tools, and Applications;2022
3. The Modest State of Learning, Sampling, and Verifying Strategies;Leveraging Applications of Formal Methods, Verification and Validation. Adaptation and Learning;2022