Hybrid Feature Based Approach for Recommending Friends in Social Networking Systems

R. Yadav, Shashi Prakash Tripathi, A. K. Rai, R. Tewari
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引用次数: 1

Abstract

Link prediction is an effective technique to be applied on graph-based models due to its wide range of applications. It helps to understand associations between nodes in social communities. The social networking systems use link prediction techniques to recommend new friends to their users. In this paper, we design two time efficient algorithms for finding all paths of length-2 and length-3 between every pair of vertices in a network which are further used in computation of final similarity scores in the proposed method. Further, we define a hybrid feature-based node similarity measure for link prediction that captures both local and global graph features. The designed similarity measure provides friend recommendations by traversing only paths of limited length, which causes more faster and accurate friend recommendations. Experimental results show adequate level of accuracy in friend recommendations within considerable computing time.
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基于混合特征的社交网络系统好友推荐方法
链路预测是一种应用于基于图的模型的有效技术,具有广泛的应用前景。它有助于理解社会群体中节点之间的联系。社交网络系统使用链接预测技术向用户推荐新朋友。在本文中,我们设计了两种时间效率高的算法来寻找网络中每对顶点之间长度为2和长度为3的所有路径,并将其进一步用于计算最终的相似度得分。此外,我们定义了一种基于混合特征的节点相似度度量,用于捕获局部和全局图特征的链接预测。所设计的相似性度量通过只遍历有限长度的路径来提供朋友推荐,从而获得更快和更准确的朋友推荐。实验结果表明,在相当长的计算时间内,好友推荐具有足够的准确性。
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来源期刊
International Journal of Web Based Communities
International Journal of Web Based Communities Social Sciences-Communication
CiteScore
2.00
自引率
0.00%
发文量
30
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