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  • Turkish Journal of Electrical Engineering and Computer Science
  • Volume:23 Issue:5
  • Intelligent text classification system based on self-administered ontology

Intelligent text classification system based on self-administered ontology

Authors : MANOJ MANUJA, DEEPAK GARG
Pages : 1393-1404
Doi:10.3906/elk-1305-112
View : 17 | Download : 8
Publication Date : 0000-00-00
Article Type : Research Paper
Abstract :Over the last couple of decades, web classification has gradually transitioned from a syntax- to semantic-centered approach that classifies the text based on domain ontologies. These ontologies are either built manually or populated automatically using machine learning techniques. A prerequisite condition to build such systems is the availability of ontology, which may be either full-fledged domain ontology or a seed ontology that can be enriched automatically. This is a dependency condition for any given semantics-based text classification system. We share the details of a proof of concept of a web classification system that is self-governed in terms of ontology population and does not require any prebuilt ontology, neither full-fledged nor seed. It starts from a user query, builds a seed ontology from it, and automatically enriches it by extracting concepts from the downloaded documents only. The evaluated parameters like precision insert ignore into journalissuearticles values(85{\%});, accuracy insert ignore into journalissuearticles values(86{\%});, AUC insert ignore into journalissuearticles values(convex);, and MCC insert ignore into journalissuearticles values(high positive); demonstrate the better performance of the proposed system when compared with similar automated text classification systems.
Keywords : Ontology, support vector machine, resource description framework, text classification

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