MEASURING THE PERFORMANCE OF SIMILARITY PROPAGATION IN AN SEMANTIC SEARCH ENGINE
Abstract
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In the current scenario, web page result personalization is playing a vital role. Nearly 80 % of the users expect the best results in the first page itself without having any persistence to browse longer in URL mode. This research work focuses on two main themes: Semantic web search through online and Domain based search through offline. The first part is to find an effective method which allows grouping similar results together using BookShelf Data Structure and organizing the various clusters. The second one is focused on the academic domain based search through offline. This paper focuses on finding documents which are similar and how Vector space can be used to solve it. So more weightage is given for the principles and working methodology of similarity propagation. Cosine similarity measure is used for finding the relevancy among the documents.

Authors
S. K. Jayanthi1, S. Prema2
Vellalar College for Women, India 1, KSR College of Arts and Science, India 2

Keywords
Semantic Web, BookShelf Data Structure, Similarity Propagation, Cosine Similarity measure, Vector Space Model
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Published By :
ICTACT
Published In :
ICTACT Journal on Soft Computing
( Volume: 4 , Issue: 1 , Pages: 667-672 )
Date of Publication :
October 2013
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165
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