Digital Library

cab1

 
Title:      “SURFING FOR KNOWLEDGE” FINDING SEMANTICALLY SIMILAR WEB CLUSTERS
Author(s):      David Cleary , Diarmuid O´ Donoghue
ISBN:      972-99353-0-0
Editors:      Pedro Isaías and Nitya Karmakar
Year:      2004
Edition:      2
Keywords:      Information Retrieval, Semantic Web, Latent Semantic Analysis.
Type:      Short Paper
First Page:      1129
Last Page:      1134
Language:      English
Cover:      cover          
Full Contents:      click to dowload Download
Paper Abstract:      In this paper we present our technique for finding semantically similar clusters within web documents obtained from a set of queries retrieved from the Google search engine. This technique utilizes a clustering algorithm based on previous Latent Semantic Analysis (LSA) work pioneered by Deerwester. In this paper we demonstrate how by using our clustering algorithm we can resolve ambiguities prevalent in natural language such as polysemy and synonymy. Following from a detailed description of the algorithm we present our initial findings using real world Internet queries. We conclude by evaluating the merits of our clustering algorithm through comparison with results observed by human categorization.
   

Social Media Links

Search

Login