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Semi-Automatic Terminology Ontology Learning Based on Topic Modeling (1709.01991v1)

Published 5 Aug 2017 in cs.IR and cs.CL

Abstract: Ontologies provide features like a common vocabulary, reusability, machine-readable content, and also allows for semantic search, facilitate agent interaction and ordering & structuring of knowledge for the Semantic Web (Web 3.0) application. However, the challenge in ontology engineering is automatic learning, i.e., the there is still a lack of fully automatic approach from a text corpus or dataset of various topics to form ontology using machine learning techniques. In this paper, two topic modeling algorithms are explored, namely LSI & SVD and Mr.LDA for learning topic ontology. The objective is to determine the statistical relationship between document and terms to build a topic ontology and ontology graph with minimum human intervention. Experimental analysis on building a topic ontology and semantic retrieving corresponding topic ontology for the user's query demonstrating the effectiveness of the proposed approach.

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Authors (3)
  1. Monika Rani (11 papers)
  2. Amit Kumar Dhar (5 papers)
  3. O. P. Vyas (16 papers)
Citations (66)