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            Enriching Ontology Concepts Based on Texts from WWW and Corpus
            
            
               Tarek F. Gharib (King Abdulaziz University, Saudi Arabia)  
              
             
            
            
               Nagwa Badr (Ain Shams University, Egypt)  
              
             
            
            
               Shaimaa Haridy (Ain Shams University, Egypt)  
              
             
            
            
               Ajith Abraham (Machine Intelligence Research Labs (MIR Labs), USA)  
              
             
                    
            
              Abstract: In spite of the growing of ontological   engineering tools, ontology knowledge acquisition remains a highly   manual, time-consuming and complex task. Automatic ontology learning   is a well-established research field whose goal is to support the   semi-automatic construction of ontologies starting from available   digital resources (e.g., A corpus, web pages, dictionaries,   semi-structured and structured sources) in order to reduce the time   and effort in the ontology development process. This paper proposes   an enhanced methodology for enriching Lexical Ontologies such as the   popular open-domain vocabulary –WordNet. Ontologies like WordNet   can be semantically enriched to obtain extensions and enhancements   to its lexical database. The proliferation of senses in WordNet is   considered as one of its main shortcomings for practical   applications. Therefore, the presented methodology depends on the   Coarse-Grained word senses. These senses are generated from applying   WordNet Fine-Grained word senses to a Merging Sense algorithm. This   algorithm merges only semantically similar word senses instead of   applying traditional clustering techniques. A performance comparison   is illustrated between two different data sources (Web, Corpus) used   in the Enrichment process. The results obtained from using   Coarse-Grained word senses in both cases yields better precision   than Fine-Grained word senses in the Word Sense Disambiguation   task. 
             
            
              Keywords: coarse-grained word senses, corpus, ontology, semantic web, word sense disambiguation (WSD), word senses 
             
            Categories:  M.7  
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