Formal verification of neural agents in non-deterministic environments

作者:Michael E. Akintunde, Elena Botoeva, Panagiotis Kouvaros, Alessio Lomuscio

摘要

We introduce a model for agent-environment systems where the agents are implemented via feed-forward ReLU neural networks and the environment is non-deterministic. We study the verification problem of such systems against CTL properties. We show that verifying these systems against reachability properties is undecidable. We introduce a bounded fragment of CTL, show its usefulness in identifying shallow bugs in the system, and prove that the verification problem against specifications in bounded CTL is in coNExpTime and PSpace-hard. We introduce sequential and parallel algorithms for MILP-based verification of agent-environment systems, present an implementation, and report the experimental results obtained against a variant of the VerticalCAS use-case and the frozen lake scenario.

论文关键词:Verification, Model checking, Neural agents

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论文官网地址:https://doi.org/10.1007/s10458-021-09529-3