Graph-Based Friend Recommendation in Social Networks Using Artificial Bee Colony

Fatemeh Akbari, A. Tajfar, A. F. Nejad
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引用次数: 19

Abstract

Friend recommendation is a fundamental problem in online social networks, which aims to recommend new links for each user. In this paper, a new methodology based on graph topology and artificial bee colony is proposed to effective friend recommendation in social networks. In proposed approach, a sub-graph of network is composed by the study user and all the other connected users separately by three degree of separation from the root user. The proposed recommendation system computes four parameters within the generated sub-graph, and suggests the new links for the root user. Artificial bee colony is applied to optimize the relative importance of the weights of each parameter. To verify the proposed methodology, we chose a graph with 1000 members from YouTube. We considered the 20% of all links within the network graph to learning the system using artificial bee colony algorithm. These links were removed from the graph, and a data was generated by using all candidate nodes within the resulted graph, to be a recommend. Then, the generated data were divided into training set and evaluation set. Obtained results demonstrated the robustness of proposed approach with a 36% return rate.
基于图的人工蜂群社交网络好友推荐
朋友推荐是在线社交网络的一个基本问题,其目的是为每个用户推荐新的链接。本文提出了一种基于图拓扑和人工蜂群的社交网络好友推荐方法。该方法通过与根用户的三度分离,将学习用户和所有其他连接用户分别组成网络子图。提出的推荐系统在生成的子图中计算四个参数,并为根用户推荐新的链接。采用人工蜂群优化各参数权重的相对重要度。为了验证所提出的方法,我们从YouTube上选择了一个包含1000个成员的图表。我们考虑网络图中所有链路的20%使用人工蜂群算法来学习系统。从图中删除这些链接,并使用结果图中的所有候选节点生成数据,作为推荐。然后,将生成的数据分为训练集和评估集。获得的结果表明,该方法的鲁棒性与36%的回报率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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