TAR: Neural Logical Reasoning across TBox and ABox

05/29/2022
by   Zhenwei Tang, et al.
0

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 inferring the explanations of each query with descriptive concepts, which make answers comprehensible to users and are of great usefulness in the field of applied ontology. In this work, we formulate the problem of neural logical reasoning across TBox and ABox (TA-NLR), solving which needs to address challenges in incorporating, representing, and operating on concepts. We propose an original solution named TAR for TA-NLR. Firstly, we incorporate description logic based ontological axioms to provide the source of concepts. Then, we represent concepts and queries as fuzzy sets, i.e., sets whose elements have degrees of membership, to bridge concepts and queries with entities. Moreover, we design operators involving concepts on top of fuzzy set representation of concepts and queries for optimization and inference. Extensive experimental results on two real-world datasets demonstrate the effectiveness of TAR for TA-NLR.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/23/2014

The Logical Difference for the Lightweight Description Logic EL

We study a logic-based approach to versioning of ontologies. Under this ...
research
05/07/2020

Détermination Automatique des Fonctions d'Appartenance et Interrogation Flexible et Coopérative des Bases de Données

Flexible querying of DB allows to extend DBMS in order to support imprec...
research
08/20/2020

Towards Inferring Queries from Simple and Partial Provenance Examples

The field of query-by-example aims at inferring queries from output exam...
research
02/02/2022

Quantification and aggregation over concepts of the ontology

The first phase of developing an intelligent system is the selection of ...
research
04/23/2023

LogicRec: Recommendation with Users' Logical Requirements

Users may demand recommendations with highly personalized requirements i...
research
03/13/2023

A Framework for Combining Entity Resolution and Query Answering in Knowledge Bases

We propose a new framework for combining entity resolution and query ans...
research
10/31/2016

Ontology Verbalization using Semantic-Refinement

We propose a rule-based technique to generate redundancy-free NL descrip...

Please sign up or login with your details

Forgot password? Click here to reset