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Link Prediction for Bipartite Social Networks: The Role of Structural Holes

机译:双向社交网络的链接预测:结构漏洞的作用

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Link prediction is an important problem in social network mining. Traditional neighborhood based methods such as Common neighbors, Jaccard Coefficient and Adamic/Adar are well studied in link prediction. However, the concept of structural holes does not receive significant attention in link prediction. As a preliminary work in studying structural holes, we focus on bipartite social networks, which is a special class of social networks that consists of two distinct roles for the users, and links are between users of different roles. In this study, a few implementations of structural holes are proposed, which are then validated with extended neighborhood based methods on a real dataset derived from IMDb network. The results show that structural holes help in improving accuracies in link prediction.
机译:链接预测是社交网络挖掘中的一个重要问题。在链接预测中,对基于传统邻域的方法(例如,公共邻域,Jaccard系数和Adamic / Adar)进行了深入研究。但是,结构孔的概念在链接预测中并未得到足够的重视。作为研究结构漏洞的初步工作,我们将重点放在双向社交网络上,双向社交网络是一类特殊的社交网络,由两个不同的用户角色组成,并且链接位于不同角色的用户之间。在这项研究中,提出了结构孔的一些实现,然后在基于IMDb网络的真实数据集上使用基于扩展邻域的方法对其进行了验证。结果表明,结构孔有助于提高链接预测的准确性。

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