Learning Heuristics for Quantified Boolean Formulas through Reinforcement Learning
Gil Lederman, Markus N. Rabe, Sanjit A. Seshia, Edward A. Lee
2020eScholarship (California Digital Library)18 citations
Abstract
We demonstrate how to learn efficient heuristics for automated reasoning algorithms for quantified Boolean formulas through deep reinforcement learning. We focus on a backtracking search algorithm, which can already solve formulas of impressive size - up to hundreds of thousands of variables. The main challenge is to find a representation of these formulas that lends itself to making predictions in a scalable way. For a family of challenging problems in 2QBF we learn a heuristic that solves significantly more formulas compared to the existing handwritten heuristics.
Topics & Concepts
HeuristicsBacktrackingReinforcement learningComputer scienceHeuristicFocus (optics)Artificial intelligenceScalabilityRepresentation (politics)Theoretical computer scienceMachine learningAlgorithmPhysicsOpticsPoliticsDatabaseOperating systemLawPolitical scienceMachine Learning and AlgorithmsFormal Methods in VerificationMachine Learning and Data Classification