SaDe

Learning Models that Provably Satisfy Domain Constraints

Conference Paper (2023)
Author(s)

Kshitij Goyal (Katholieke Universiteit Leuven)

Sebastijan Dumancic (TU Delft - Algorithmics)

Hendrik Blockeel (Katholieke Universiteit Leuven)

Research Group
Algorithmics
DOI related publication
https://doi.org/10.1007/978-3-031-26419-1_25
More Info
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Publication Year
2023
Language
English
Research Group
Algorithmics
Bibliographical Note
.Green Open Access added to TU Delft Institutional Repository ‘You share, we take care!’ – Taverne project https://www.openaccess.nl/en/you-share-we-take-care Otherwise as indicated in the copyright section: the publisher is the copyright holder of this work and the author uses the Dutch legislation to make this work public.@en
Pages (from-to)
410-425
ISBN (print)
9783031264184
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Abstract

In many real world applications of machine learning, models have to meet certain domain-based requirements that can be expressed as constraints (for example, safety-critical constraints in autonomous driving systems). Such constraints are often handled by including them in a regularization term, while learning a model. This approach, however, does not guarantee 100% satisfaction of the constraints: it only reduces violations of the constraints on the training set rather than ensuring that the predictions by the model will always adhere to them. In this paper, we present a framework for learning models that provably fulfill the constraints under all circumstances (i.e., also on unseen data). To achieve this, we cast learning as a maximum satisfiability problem, and solve it using a novel SaDe algorithm that combines constraint satisfaction with gradient descent. We compare our method against regularization based baselines on linear models and show that our method is capable of enforcing different types of domain constraints effectively on unseen data, without sacrificing predictive performance.

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