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The New Link Prediction Methods Based on Spectral Analysis

机译:基于谱分析的链路预测新方法

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The research of link prediction has been widely concerned. Most of the algorithms analyze the topology information of networks to judge whether there is any connection between nodes. Recently, the new link prediction indices about social networks need to know the additional attribute information of nodes, but it is very difficult and the practicality is not very high. In this paper, we propose two new indices SALP and AD-SALP that consider the properties of the links. The spectral analysis is introduced into the methods and the eigenvectors of Laplacian matrix are used to map the nodes to the two-dimensional space that it is easy to calculate the similarity distance between a pair of nodes. Then the similarity calculation of the nodes is directly transformed into the supervised binary classification prediction problem for the edges. The experimental results on six real-world networks prove the feasibility of the SALP index and show that the AD-SALP index outperforms other prediction baselines.
机译:链接预测的研究受到广泛关注。大多数算法分析网络的拓扑信息,以判断节点之间是否存在任何连接。近来,关于社交网络的新的链接预测指标需要知道节点的附加属性信息,但是这非常困难并且实用性不是很高。在本文中,我们提出了两个新的索引SALP和AD-SALP,它们考虑了链接的属性。该方法引入了频谱分析,并使用拉普拉斯矩阵的特征向量将节点映射到二维空间,从而易于计算一对节点之间的相似距离。然后将节点的相似度计算直接转化为边缘的监督二元分类预测问题。在六个真实世界网络上的实验结果证明了SALP指数的可行性,并表明AD-SALP指数优于其他预测基准。

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