Combining Machine Learning and Ontology: A Systematic Literature Review

Motivated by the desire to explore the process of combining inductive and deductive reasoning, we conducted a systematic literature review of articles that investigate the integration of machine learning and ontologies. The objective was to identify diverse techniques that incorporate both inductive...

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Hauptverfasser: Ghidalia, Sarah, Narsis, Ouassila Labbani, Bertaux, Aurélie, Nicolle, Christophe
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Narsis, Ouassila Labbani
Bertaux, Aurélie
Nicolle, Christophe
description Motivated by the desire to explore the process of combining inductive and deductive reasoning, we conducted a systematic literature review of articles that investigate the integration of machine learning and ontologies. The objective was to identify diverse techniques that incorporate both inductive reasoning (performed by machine learning) and deductive reasoning (performed by ontologies) into artificial intelligence systems. Our review, which included the analysis of 128 studies, allowed us to identify three main categories of hybridization between machine learning and ontologies: learning-enhanced ontologies, semantic data mining, and learning and reasoning systems. We provide a comprehensive examination of all these categories, emphasizing the various machine learning algorithms utilized in the studies. Furthermore, we compared our classification with similar recent work in the field of hybrid AI and neuro-symbolic approaches.
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subjects Algorithms
Artificial intelligence
Data mining
Literature reviews
Machine learning
Reasoning
title Combining Machine Learning and Ontology: A Systematic Literature Review
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