Interactive ontology debugging: two query strategies for efficient fault localization
Kostyantyn Shchekotykhin, Gerhard Friedrich, Philipp Fleiss, Patrick, Rodler

TL;DR
This paper introduces two query strategies for efficient ontology debugging, demonstrating that an entropy-based approach significantly reduces the number of queries needed to identify faults, especially when leveraging user error probabilities.
Contribution
It proposes an entropy-based query selection strategy for ontology debugging that outperforms a simple split-in-half method, effectively utilizing user error information.
Findings
Entropy-based method reduces query count significantly.
Performance is robust even with uniform fault probabilities.
Evaluation confirms superiority over traditional strategies.
Abstract
Effective debugging of ontologies is an important prerequisite for their broad application, especially in areas that rely on everyday users to create and maintain knowledge bases, such as the Semantic Web. In such systems ontologies capture formalized vocabularies of terms shared by its users. However in many cases users have different local views of the domain, i.e. of the context in which a given term is used. Inappropriate usage of terms together with natural complications when formulating and understanding logical descriptions may result in faulty ontologies. Recent ontology debugging approaches use diagnosis methods to identify causes of the faults. In most debugging scenarios these methods return many alternative diagnoses, thus placing the burden of fault localization on the user. This paper demonstrates how the target diagnosis can be identified by performing a sequence of…
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