X-Similarity: Computing Semantic Similarity between concepts from different ontologies

TitleX-Similarity: Computing Semantic Similarity between concepts from different ontologies
Publication TypeJournal Article
Year of Publication2006
AuthorsPetrakis, EGM, Varelas, G, Hliaoutakis, A, Raftopoulou, P
JournalJournal of Digital Information Management
Volume4
Issue4
Pagination233 - 237
Date Published2006
KeywordsContent analysis, MeSH, Ontology, Semantics, WordNet
Abstract

Semantic Similarity relates to computing the similarity between concepts (terms) which are not necessarily lexically similar. We investigate approaches for computing semantic similarity by mapping terms to an ontology and by examining their relationships in that ontology. More specifically, we investigate approaches to computing the semantic similarity between natural language terms (using WordNet as the underlying reference ontology) and between medical terms (using the MeSH ontology of medical and biomedical terms). The most popular semantic similarity methods are implemented and evaluated using WordNet and MeSH. The focus of this work is also on cross ontology methods which are capable of computing the semantic similarity between terms stemming from different ontologies (WordNet and MeSH in this work). This is a far more difficult problem (than the single ontology one referred to above) which has not been investigated adequately in the literature. X-Similarity, a novel cross-ontology similarity method is also a contribution of this work. All methods examined in this work are integrated into a semantic similarity system which is accessible on the Web.

URLhttp://www.scopus.com/inward/record.url?eid=2-s2.0-33845952568&partnerID=40&md5=5bd213d7f778b7c4e7b32133f4b456f8

Collaborative Partner

Institute of Electronic and Information Technology (IEIT)

Collaborative Partner

Collaborative Partner