Title
Ontology Extraction for Large Ontologies via Modularity and Forgetting.
Abstract
We are interested in the computation of ontology extracts based on forgetting from large ontologies in real-world scenarios. Such scenarios require nearly all of the terms in the ontology to be forgotten, which poses a significant challenge to forgetting tools. In this paper we show that modularization and forgetting can be combined beneficially in order to compute ontology extracts. While a module is a subset of axioms of a given ontology, the solution of forgetting (also known as a uniform interpolant) is a compact representation of the ontology limited to a subset of the signature. The approach introduced in this paper uses an iterative workflow of four stages: (i)~extension of the given signature and, if needed partitioning, (ii)~modularization, (iii)~forgetting, and (iv)~evaluation by domain expert. For modularization we use three kinds of modules: locality-based, semantic and minimal subsumption modules. For forgetting three tools are used: NUI, LETHE and FAME. An evaluation on the SNOMED CT and NCIt ontologies for standard concept name lists showed that precomputing ontology modules reduces the number of terms that need to be forgotten. An advantage of the presented approach is high precision of the computed ontology extracts.
Year
DOI
Venue
2019
10.1145/3360901.3364424
K-CAP
Keywords
Field
DocType
Knowledge management, knowledge representation and reasoning, knowledge abstraction, ontology abstraction, description logics, ontology modularity, uniform interpolation, forgetting
Ontology (information science),Ontology,Forgetting,Knowledge representation and reasoning,Information retrieval,Subject-matter expert,Computer science,Description logic,SNOMED CT,Modularity
Conference
ISBN
Citations 
PageRank 
978-1-4503-7008-0
1
0.35
References 
Authors
0
5
Name
Order
Citations
PageRank
Jieying Chen1116.43
Ghadah Alghamdi212.38
Renate A. Schmidt385783.52
Dirk Walther410.69
Yongsheng Gao51241102.32