Logo image
Neuro-Symbolic Predictive Process Monitoring
Journal article   Open access   Peer reviewed

Neuro-Symbolic Predictive Process Monitoring

A Mezini, E Umili, Ivan Donadello, Fabrizio Maria Maggi, M Mancanelli and F Patrizi
Information Systems, Vol.141, pp.1-17
141
2026
Handle:
https://hdl.handle.net/10863/52465

Abstract

Deep learning with logical knowledge Differentiable automata Linear temporal logic Neuro-Symbolic AI Suffix prediction
This paper addresses the problem of suffix prediction in Business Process Management (BPM) by proposing a Neuro-Symbolic Predictive Process Monitoring (PPM) approach that integrates data-driven learning with temporal logic-based prior knowledge. While recent approaches leverage deep learning models for suffix prediction, they often fail to satisfy even basic logical constraints due to the lack of explicit integration of domain knowledge during training. We propose a novel method to incorporate Linear Temporal Logic over finite traces (LTLf ) into the training process of autoregressive sequence predictors. Our approach introduces a differentiable logical loss function, defined using a soft approximation of LTLf semantics and the Gumbel-Softmax trick, which can be combined with standard predictive losses. This ensures that the model learns to generate suffixes that are both accurate and logically consistent. Experimental evaluation on three real-world datasets shows that our method improves suffix prediction accuracy and compliance with temporal constraints. We also introduce two variants of the logic loss (local and global) and demonstrate their effectiveness under noisy and realistic settings. While developed in the context of BPM, our framework is applicable to any symbolic sequence generation task and contributes to advancing Neuro-Symbolic AI.
pdf
1-s2.0-S0306437926000761-main3.72 MBDownloadView
Open Access
url
https://www.sciencedirect.com/science/article/pii/S0306437926000761View

Details

Metrics

1 Record Views
Logo image