Title of article :
Structural and Non-Structural Similarity Combination of Users in Social Networks
Author/Authors :
malekmohammad, azam Department of Computer Science - Safahan Institute of Higher Education , khosravi-farsani, hadi Department of Computer Engineering - Shahrekord University
Pages :
10
From page :
43
To page :
52
Abstract :
Estimating similarity is expressed in many domains and sciences. For instance, data mining, web mining, clustering, search engines, ontology mapping and social networks require the denition and deployment of similarity. User similarity in social networks is one of the main problems and has many applications in this area. In this paper, a new method is introduced for combining structural and non-structural similarity between users in social networks. In the experimental section, structural similarity algorithms are combined with non-structural similarity algorithms through the proposed method. All experiments are implemented on some part of the Twitter dataset. Experimental results show that the precisions of all algorithms are increased with the proposed method.
Keywords :
Social Networks , Structural Similarity , Non-Structural Similarity
Journal title :
Astroparticle Physics
Serial Year :
2016
Record number :
2468298
Link To Document :
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