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Main Authors: Wielinga, Sanne, Heyninck, Jesse
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.19573
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author Wielinga, Sanne
Heyninck, Jesse
author_facet Wielinga, Sanne
Heyninck, Jesse
contents Machine learning (ML) techniques play a pivotal role in high-stakes domains such as healthcare, where accurate predictions can greatly enhance decision-making. However, most high-performing methods such as neural networks and ensemble methods are often opaque, limiting trust and broader adoption. In parallel, symbolic methods like Answer Set Programming (ASP) offer the possibility of interpretable logical rules but do not always match the predictive power of ML models. This paper proposes a hybrid approach that integrates ASP-derived rules from the FOLD-R++ algorithm with black-box ML classifiers to selectively correct uncertain predictions and provide human-readable explanations. Experiments on five medical reveal statistically significant performance gains in accuracy and F1 score. This study underscores the potential of combining symbolic reasoning with conventional ML to achieve high interpretability without sacrificing accuracy
format Preprint
id arxiv_https___arxiv_org_abs_2506_19573
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Interpretable Hybrid Machine Learning Models Using FOLD-R++ and Answer Set Programming
Wielinga, Sanne
Heyninck, Jesse
Artificial Intelligence
Machine learning (ML) techniques play a pivotal role in high-stakes domains such as healthcare, where accurate predictions can greatly enhance decision-making. However, most high-performing methods such as neural networks and ensemble methods are often opaque, limiting trust and broader adoption. In parallel, symbolic methods like Answer Set Programming (ASP) offer the possibility of interpretable logical rules but do not always match the predictive power of ML models. This paper proposes a hybrid approach that integrates ASP-derived rules from the FOLD-R++ algorithm with black-box ML classifiers to selectively correct uncertain predictions and provide human-readable explanations. Experiments on five medical reveal statistically significant performance gains in accuracy and F1 score. This study underscores the potential of combining symbolic reasoning with conventional ML to achieve high interpretability without sacrificing accuracy
title Interpretable Hybrid Machine Learning Models Using FOLD-R++ and Answer Set Programming
topic Artificial Intelligence
url https://arxiv.org/abs/2506.19573