Constraint-aware Learning of Probabilistic Sequential Models for Multi-Label Classification
Machine Learning
2025-07-22 v1 Artificial Intelligence
Logic in Computer Science
Abstract
We investigate multi-label classification involving large sets of labels, where the output labels may be known to satisfy some logical constraints. We look at an architecture in which classifiers for individual labels are fed into an expressive sequential model, which produces a joint distribution. One of the potential advantages for such an expressive model is its ability to modelling correlations, as can arise from constraints. We empirically demonstrate the ability of the architecture both to exploit constraints in training and to enforce constraints at inference time.
Cite
@article{arxiv.2507.15156,
title = {Constraint-aware Learning of Probabilistic Sequential Models for Multi-Label Classification},
author = {Mykhailo Buleshnyi and Anna Polova and Zsolt Zombori and Michael Benedikt},
journal= {arXiv preprint arXiv:2507.15156},
year = {2025}
}