DeepSAT is an ongoing research project investigating the use of deep reinforcement learning for automated theorem proving in propositional logic. In contrast to traditional SAT solvers, which focus on satisfiability checking, our aim is to construct formal proofs of validity within the sequent calculus framework. As a preliminary step toward this goal, we have focused on training recurrent neural networks to predict whether a given propositional formula is a tautology. These models will form the basis of the value function in the planned reinforcement learning architecture. Although in its early stages, DeepSAT lays the groundwork for a logic-agnostic, explainable, and energy-efficient alternative to existing neural approaches based on large language models, which require substantial computational resources.

Recurrent Neural Networks for Guiding Proof Search in Propositional Logic

Amato G.
;
Balestra N.
;
Parton M.
2025-01-01

Abstract

DeepSAT is an ongoing research project investigating the use of deep reinforcement learning for automated theorem proving in propositional logic. In contrast to traditional SAT solvers, which focus on satisfiability checking, our aim is to construct formal proofs of validity within the sequent calculus framework. As a preliminary step toward this goal, we have focused on training recurrent neural networks to predict whether a given propositional formula is a tautology. These models will form the basis of the value function in the planned reinforcement learning architecture. Although in its early stages, DeepSAT lays the groundwork for a logic-agnostic, explainable, and energy-efficient alternative to existing neural approaches based on large language models, which require substantial computational resources.
2025
CEUR Workshop Proceedings
Inglese
26th Italian Conference on Theoretical Computer Science, ICTCS 2025
2025
Campus of Pescara, at the Department of Economic Studies of the University of Chieti-Pescara, ita
4039
113
126
14
CEUR-WS
Automated and interactive theorem proving; Deep learning; Propositional logic; Recurrent neural networks
no
none
Amato, G.; Balestra, N.; Maggesi, M.; Parton, M.
273
info:eu-repo/semantics/conferenceObject
4
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11564/867277
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