AILGLOSep 2, 2022

SATformer: Transformer-Based UNSAT Core Learning

arXiv:2209.00953v225 citationsh-index: 19
Originality Highly original
AI Analysis

This work addresses the SAT problem for logic and verification tasks, offering a novel learning-based approach that enhances existing solvers.

SATformer tackles the Boolean Satisfiability (SAT) problem by focusing on unsatisfiability, using a Transformer-based model to identify unsatisfiable sub-problems, and it reduces solver runtime by an average of 21.33%.

This paper introduces SATformer, a novel Transformer-based approach for the Boolean Satisfiability (SAT) problem. Rather than solving the problem directly, SATformer approaches the problem from the opposite direction by focusing on unsatisfiability. Specifically, it models clause interactions to identify any unsatisfiable sub-problems. Using a graph neural network, we convert clauses into clause embeddings and employ a hierarchical Transformer-based model to understand clause correlation. SATformer is trained through a multi-task learning approach, using the single-bit satisfiability result and the minimal unsatisfiable core (MUC) for UNSAT problems as clause supervision. As an end-to-end learning-based satisfiability classifier, the performance of SATformer surpasses that of NeuroSAT significantly. Furthermore, we integrate the clause predictions made by SATformer into modern heuristic-based SAT solvers and validate our approach with a logic equivalence checking task. Experimental results show that our SATformer can decrease the runtime of existing solvers by an average of 21.33%.

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