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Fast Trust Computation in Online Social Networks

Authors
Nasir, Safi-UllahKim, Tae-Hyung
Issue Date
Nov-2013
Publisher
Oxford University Press
Keywords
social networks; trust; min-max trust propagation; landmarks
Citation
IEICE Transactions on Communications, v.E96B, no.11, pp 2774 - 2783
Pages
10
Indexed
SCI
SCIE
SCOPUS
Journal Title
IEICE Transactions on Communications
Volume
E96B
Number
11
Start Page
2774
End Page
2783
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/26677
DOI
10.1587/transcom.E96.B.2774
ISSN
0916-8516
1745-1345
Abstract
Computing the level of trust between two indirectly connected users in an online social network (OSN) is a problem that has received considerable attention of researchers in recent years. Most algorithms focus on finding the most accurate prediction of trust; however, little work has been done to make them fast enough to be applied on today's very large OSNs. To address this need we propose a method for fast trust computation that is suitable for very large social networks. Our method uses min-max trust propagation strategies along with the landmark based method. Path strength of every node is pre-computed to and from a small set of reference users or landmarks. Using these pre-computed values, we estimate the strength of trust paths from the source user to in-neighbors of the target user. The final trust estimate is obtained by aggregating information from most reliable in-neighbors of the target user. We also describe how the landmark based method can be used for fast trust computation according to other trust propagation models. Experiments on a variety of real social network datasets verify the efficiency and accuracy of our method.
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