Link Recommendation for Promoting Information Diffusion in Social Networks
Conference Paper, Proceedings of 22nd International World Wide Web Conference (WWW '13), pp. 185 - 186, May, 2013
Abstract
Online social networks mainly have two functions: social interaction and information diffusion. Most of current link recommendation researches only focus on strengthening the social interaction function, but ignore the problem of how to enhance the information diffusion function. For solving this problem, this paper introduces the concept of user diffusion degree and proposes the algorithm for calculating it, then combines it with traditional recommendation methods for reranking recommended links. Experimental results on Email dataset and Amazon dataset under Independent Cascade Model and Linear Threshold Model show that our method noticeably outperforms the traditional methods in terms of promoting information diffusion.
BibTeX
@conference{Li-2013-120853,author = {Dong Li and Zhiming Xu and Sheng Li and Xin Sun and Anika Gupta and Katia P. Sycara},
title = {Link Recommendation for Promoting Information Diffusion in Social Networks},
booktitle = {Proceedings of 22nd International World Wide Web Conference (WWW '13)},
year = {2013},
month = {May},
pages = {185 - 186},
}
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