Improving Link Ranking Quality by Quasi-Common Neighbourhood

Andrea Chiancone, Valentina Franzoni, R. Niyogi, A. Milani
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引用次数: 29

Abstract

Most of the best performing link prediction ranking measures evaluate the common neighbourhood of a pair of nodes in a network, in order to assess the likelihood of a new link. On the other hand, the same zero rank value is given to node pairs with no common neighbourhood, which usually are a large number of potentially new links, thus resulting in very low quality overall link ranking in terms of average edit distance to the optimal rank. In this paper we introduce a general technique for improving the quality of the ranking of common neighbours-based measures. The proposed method iteratively applies any given ranking measure to the quasi-common neighbours of the node pair. Experiments held on widely accepted datasets show that QCNAA, a quasi-common neighbourhood measure derived from the well know Adamic-Adar (AA), generates rankings which generally improve the ranking quality, while maintaining the prediction capability of the original AA measure.
利用拟共邻域提高链接排序质量
大多数性能最好的链路预测排序方法评估网络中一对节点的共同邻域,以评估新链路的可能性。另一方面,对于没有共同邻域的节点对,通常是大量潜在的新链接,给予相同的零秩值,从而导致从到最优秩的平均编辑距离来看,整体链接排序的质量非常低。在本文中,我们介绍了一种提高基于共同邻居的度量的排名质量的一般技术。该方法迭代地将任意给定的排序测度应用于节点对的拟共同邻居。在广泛接受的数据集上进行的实验表明,QCNAA是一种衍生自著名的Adamic-Adar (AA)的准共同邻域度量,在保持原始AA度量的预测能力的同时,生成的排名总体上提高了排名质量。
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