In safety-critical applications, guaranteeing the satisfaction of constraints over continuous environments is crucial, e.g., an autonomous agent should never crash into obstacles or go off-road. Neural models struggle in the presence of these constraints, especially when they involve intricate algebraic relationships. To address this, we introduce a differentiable probabilistic layer that guarantees the satisfaction of non-convex algebraic constraints over continuous variables. This probabilistic algebraic layer (PAL) can be seamlessly plugged into any neural architecture and trained via maximum likelihood without requiring approximations. PAL defines a distribution over conjunctions and disjunctions of linear inequalities, parameterized by polynomials. This formulation enables efficient and exact renormalization via symbolic integration, which can be amortized across different data points and easily parallelized on a GPU. We showcase PAL and our integration scheme on benchmarks for al...

A Probabilistic Neuro-symbolic Layer for Algebraic Constraint Satisfaction / Kurscheidt, L.; Morettin, P.; Sebastiani, R.; Passerini, A.; Vergari, A.. - 286:(2025), pp. 2431-2445. ( 41st Conference on Uncertainty in Artificial Intelligence, UAI 2025 Rio de Janeiro 21st July-25th July 2025).

A Probabilistic Neuro-symbolic Layer for Algebraic Constraint Satisfaction

Morettin P.;Sebastiani R.;Passerini A.;Vergari A.
2025-01-01

Abstract

In safety-critical applications, guaranteeing the satisfaction of constraints over continuous environments is crucial, e.g., an autonomous agent should never crash into obstacles or go off-road. Neural models struggle in the presence of these constraints, especially when they involve intricate algebraic relationships. To address this, we introduce a differentiable probabilistic layer that guarantees the satisfaction of non-convex algebraic constraints over continuous variables. This probabilistic algebraic layer (PAL) can be seamlessly plugged into any neural architecture and trained via maximum likelihood without requiring approximations. PAL defines a distribution over conjunctions and disjunctions of linear inequalities, parameterized by polynomials. This formulation enables efficient and exact renormalization via symbolic integration, which can be amortized across different data points and easily parallelized on a GPU. We showcase PAL and our integration scheme on benchmarks for al...
2025
Conference on Uncertainty in Artificial Intelligence
Cambridge
ML Research Press
Kurscheidt, L.; Morettin, P.; Sebastiani, R.; Passerini, A.; Vergari, A.
A Probabilistic Neuro-symbolic Layer for Algebraic Constraint Satisfaction / Kurscheidt, L.; Morettin, P.; Sebastiani, R.; Passerini, A.; Vergari, A.. - 286:(2025), pp. 2431-2445. ( 41st Conference on Uncertainty in Artificial Intelligence, UAI 2025 Rio de Janeiro 21st July-25th July 2025).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/464693
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