TAR: Neural Logical Reasoning across TBox and ABox
Zhenwei Tang, Shichao Pei, Xi Peng, Fuzhen Zhuang, Xiangliang Zhang,, Robert Hoehndorf

TL;DR
This paper introduces TAR, a neural reasoning method that integrates TBox and ABox reasoning in ontologies, enabling concept-level explanations and improving multi-hop query answering in Description Logic knowledge bases.
Contribution
The paper presents TAR, a novel approach that incorporates TBox reasoning into neural logical reasoning by using fuzzy set representations and new operators, addressing a key gap in existing methods.
Findings
TAR effectively provides concept-level answers in ontologies.
Experimental results show TAR outperforms previous methods on real-world datasets.
TAR enhances interpretability by generating descriptive concept explanations.
Abstract
Many ontologies, i.e., Description Logic (DL) knowledge bases, have been developed to provide rich knowledge about various domains. An ontology consists of an ABox, i.e., assertion axioms between two entities or between a concept and an entity, and a TBox, i.e., terminology axioms between two concepts. Neural logical reasoning (NLR) is a fundamental task to explore such knowledge bases, which aims at answering multi-hop queries with logical operations based on distributed representations of queries and answers. While previous NLR methods can give specific entity-level answers, i.e., ABox answers, they are not able to provide descriptive concept-level answers, i.e., TBox answers, where each concept is a description of a set of entities. In other words, previous NLR methods only reason over the ABox of an ontology while ignoring the TBox. In particular, providing TBox answers enables…
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Taxonomy
TopicsSemantic Web and Ontologies · Natural Language Processing Techniques · Topic Modeling
MethodsOntology
