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Link prediction in complex networks based on Significance of Higher-Order Path Index (SHOPI)

机译:基于高阶路径索引(Shopi)的重要性的复杂网络中的链路预测

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摘要

Finding missing links in an observed network (static) or predicting those links that may appear in the future (dynamic) is the aim of the link prediction (LP) task. LP plays a significant role in network evolution, as shown by several works (Barabasi and Albert,1999; Kleinberg, 2000; Leskovec et al., 2005). However, this problem is still challenging for the authors. Most approaches are based on the topological properties of networks like degree, clustering coefficient, path index, etc. The common neighbor approaches are based on the idea "Friends of a friend are also friends,'' i.e., a large number of common friends between two persons (nodes) signifies more similarity between them and more likely to be connected. In the resource allocation process, a large number of connections of common neighbors of two nodes are vulnerable for leaking information (resources) through them. Based on this idea, we proposed a new similarity index SHOPI (Link prediction based on Significance of Higher Order Path Index) that tries to constrain the information leak through the common neighbors by penalizing them. Moreover, higher-order paths (as defined by six degrees of separation) are used as discriminating features with penalizing the longer paths available between the seed node pair. The experimental results on twelve real-world network datasets (collected from diverse areas) show that SHOPI outperforms the baseline methods. Moreover, SHOPI is more robust than the existing Katz index and comparable to the local path index (LP). The statistical test shows the significant difference of the proposed method (i.e., SHOPI) with the baseline approaches. (C) 2019 Elsevier B.V. All rights reserved.
机译:发现在观测到的网络(静态)缺失的链​​接或预测可能出现在未来的(动态)那些链路是链路预测(LP)的任务的目的。 LP扮演网络演进一个显著的作用,如通过几部作品(Barabasi和阿尔伯特,1999年,克林伯格,2000; Leskovec等,2005)。不过,这个问题仍然是具有挑战性的作者。大多数方法是基于共同的邻居方法是基于这样的思想网络,如度,聚类系数,路径索引等的拓扑性质“的朋友的朋友是朋友也‘’即,大量的之间的共同朋友两个人(节点)表示他们更容易被连接之间有更多的相似性,在资源分配过程中,大量的两个节点的公共相邻节点的连接是脆弱的,通过他们泄露信息(资源)。基于这种想法,我们提出了一个新的相似性索引SHOPI(基于高阶路径指数的意义链路预测),其试图通过惩罚它们约束通过公共邻居的信息泄漏。而且,更高阶的路径(如通过六度分离所定义)是用作与惩罚种子节点对之间可用的较长的路径识别特征。在12现实世界的网络数据集的实验结果(从二收集诗区域)显示,SHOPI优于基准方法。此外,SHOPI比现有卡茨指数更坚固并且与本地路径指数(LP)。统计检验显示与基线所提出的方法(即,SHOPI)的显著差接近。 (c)2019 Elsevier B.v.保留所有权利。

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