A New Expert Questioning Approach to More Efficient Fault Localization in Ontologies
Patrick Rodler, Michael Eichholzer

TL;DR
This paper introduces a novel expert questioning method for fault localization in ontologies, optimizing question types to accommodate different user behaviors and reduce expert consultation time.
Contribution
It proposes a new expert question type and an algorithm to optimize it, improving fault localization efficiency across various user types in ontology debugging.
Findings
Reduces expert consultation time in fault localization
Effective across different user types
Enhances interactive ontology debugging tools
Abstract
When ontologies reach a certain size and complexity, faults such as inconsistencies, unsatisfiable classes or wrong entailments are hardly avoidable. Locating the incorrect axioms that cause these faults is a hard and time-consuming task. Addressing this issue, several techniques for semi-automatic fault localization in ontologies have been proposed. Often, these approaches involve a human expert who provides answers to system-generated questions about the intended (correct) ontology in order to reduce the possible fault locations. To suggest as informative questions as possible, existing methods draw on various algorithmic optimizations as well as heuristics. However, these computations are often based on certain assumptions about the interacting user. In this work, we characterize and discuss different user types and show that existing approaches do not achieve optimal efficiency…
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Taxonomy
TopicsSemantic Web and Ontologies · Biomedical Text Mining and Ontologies · AI-based Problem Solving and Planning
