DocumentCode
2774040
Title
Link Prediction in Social Networks Using Computationally Efficient Topological Features
Author
Fire, Michael ; Tenenboim, Lena ; Lesser, Ofrit ; Puzis, Rami ; Rokach, Lior ; Elovici, Yuval
Author_Institution
Deutsche Telekom Labs., Ben-Gurion Univ. of the Negev, Beer-Sheva, Israel
fYear
2011
fDate
9-11 Oct. 2011
Firstpage
73
Lastpage
80
Abstract
Online social networking sites have become increasingly popular over the last few years. As a result, new interdisciplinary research directions have emerged in which social network analysis methods are applied to networks containing hundreds millions of users. Unfortunately, links between individuals may be missing due to imperfect acquirement processes or because they are not yet reflected in the online network (i.e., friends in real world did not form a virtual connection.) Existing link prediction techniques lack the scalability required for full application on a continuously growing social network which may be adding everyday users with thousands of connections. The primary bottleneck in link prediction techniques is extracting structural features required for classifying links. In this paper we propose a set of simple, easy-to-compute structural features that can be analyzed to identify missing links. We show that a machine learning classifier trained using the proposed simple structural features can successfully identify missing links even when applied to a hard problem of classifying links between individuals who have at least one common friend. A new friends measure that we developed is shown to be a good predictor for missing links and an evaluation experiment was performed on five large social networks datasets: Face book, Flickr, You Tube, Academia and The Marker. Our methods can provide social network site operators with the capability of helping users to find known, offline contacts and to discover new friends online. They may also be used for exposing hidden links in an online social network.
Keywords
learning (artificial intelligence); pattern classification; social networking (online); Academia; Facebook; Flickr; The Marker; You Tube; friends measure; link classification; link prediction technique; machine learning classifier; missing link identification; network topological feature; social network analysis; Crawlers; Facebook; Feature extraction; Machine learning; Training; YouTube; HiddenLinks; Link Prediction; Social Networks; Supervised Learning;
fLanguage
English
Publisher
ieee
Conference_Titel
Privacy, Security, Risk and Trust (PASSAT) and 2011 IEEE Third Inernational Conference on Social Computing (SocialCom), 2011 IEEE Third International Conference on
Conference_Location
Boston, MA
Print_ISBN
978-1-4577-1931-8
Type
conf
DOI
10.1109/PASSAT/SocialCom.2011.20
Filename
6113097
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