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T-ILR: a Neurosymbolic Integration for LTLf
Conference proceeding   Open access   Peer reviewed

T-ILR: a Neurosymbolic Integration for LTLf

Riccardo Andreoni, Andrei Buliga, Alessandro Daniele, Chiara Ghidini, Marco Montali and M Ronzani
Volume 284: Conference on Neurosymbolic Learning and Reasoning, Vol.284
Proceedings of Machine Learning Research, 284
International Conference on Neurosymbolic Learning and Reasoning (Santa Cruz, 08/09/2025–10/09/2025)
2025
Handle:
https://hdl.handle.net/10863/51562

Abstract

State-of-the-art approaches for integrating symbolic knowledge with deep learning architectures have demonstrated promising results in static domains. However, methods to handle temporal logic specifications remain underexplored. The only existing approach relies on an explicit representation of a finite-state automaton corresponding to the temporal specification. Instead, we aim at directly injecting the temporal knowledge into the neural model without having to rely on a separate symbolic structure. Specifically, we propose a neurosymbolic framework designed to incorporate temporal logic specifications, expressed in Linear Temporal Logic over finite traces (LTLf), directly into deep learning architectures for sequence-based tasks. We extend the Iterative Local Refinement (ILR) neurosymbolic algorithm, leveraging the recent introduction of fuzzy LTLf interpretations. We name this proposed method Temporal Iterative Local Refinement (T-ILR). We assess T-ILR on an existing benchmark for temporal neurosymbolic architectures, consisting of the classification of image sequences in the presence of temporal knowledge. The results demonstrate improved accuracy and computational efficiency compared to the state-of-the-art method.
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