2010 | OriginalPaper | Buchkapitel
Ontology Learning for Cost-Effective Large-Scale Semantic Annotation of Web Service Interfaces
verfasst von : Shahab Mokarizadeh, Peep Küngas, Mihhail Matskin
Erschienen in: Knowledge Engineering and Management by the Masses
Verlag: Springer Berlin Heidelberg
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In this paper we introduce a novel unsupervised ontology learning approach, which can be used to automatically derive a reference ontology from a corpus of web services for annotating semantically the Web services in the absence of a core ontology. Our approach relies on shallow parsing technique from natural language processing in order to identify grammatical patterns of web service message element/part names and exploit them in construction of the ontology. The generated ontology is further enriched by introducing relationships between similar concepts. The experimental results on a set of global Web services indicate that the proposed ontology learning approach generates an ontology, which can be used to automatically annotate around 52% of element part and field names in a large corpus of heterogeneous Web services.