Affiliation:
1. Interactive Media Lab Dresden, TU Dresden Dresden Germany
2. Institute of Theoretical Computer Science, TU Dresden Dresden Germany
3. Cluster of Excellence Physics of Life, TU Dresden Dresden Germany
4. Centre for Tactile Internet with Human‐in‐the‐Loop (CeTI), TU Dresden Dresden Germany
Abstract
AbstractOWL is a powerful language to formalize terminologies in an ontology. Its main strength lies in its foundation on description logics, allowing systems to automatically deduce implicit information through logical reasoning. However, since ontologies are often complex, understanding the outcome of the reasoning process is not always straightforward. Unlike already existing tools for exploring ontologies, our visualization tool Evonne is tailored towards explaining logical consequences. In addition, it supports the debugging of unwanted consequences and allows for an interactive comparison of the impact of removing statements from the ontology. Our visual approach combines (1) specialized views for the explanation of logical consequences and the structure of the ontology, (2) employing multiple layout modes for iteratively exploring explanations, (3) detailed explanations of specific reasoning steps, (4) cross‐view highlighting and colour coding of the visualization components, (5) features for dealing with visual complexity and (6) comparison and exploration of possible fixes to the ontology. We evaluated Evonne in a qualitative study with 16 experts in logics, and their positive feedback confirms the value of our concepts for explaining reasoning and debugging ontologies.
Funder
Deutsche Forschungsgemeinschaft
Subject
Computer Graphics and Computer-Aided Design
Cited by
4 articles.
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