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Level-2 node clustering coefficient-based link prediction

机译:Level-2节点群集基于系数的链路预测

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摘要

Link prediction finds missing links in static networks or future (or new) links in dynamic networks. Its study is crucial to the analysis of the evolution of networks. In the last decade, lots of works have been presented on link prediction in social networks. Link prediction has been playing a pivotal role in course of analyzing complex networks including social networks, biological networks, etc. In this work, we propose a new approach to link prediction based on level-2 node clustering coefficient. This approach defines the notion of level-2 common node and its corresponding clustering coefficient that extracts clustering information of level-2 common neighbors of the seed node pair and computes the similarity score based on this information. We performed the simulation of the existing methods (i.e. three classical methods viz., common neighbors, resource allocation, preferential attachment, clustering coefficient-based methods (CCLP and NLC), local naive based common neighbor (LNBCN), Cannistrai-Alanis-Ravai (CAR), recent Node2vec method) and the proposed method over 11 real-world network datasets. Accuracy is estimated in terms of four well-known single point summary statistics viz., area under the ROC curve (AUROC), area under the precision-recall curve (AUPR), average precision and recall. The comprehensive experiment on four metric and 11 datasets show the better performance results of the proposed method. The time complexity of the proposed method is also given and is of the order of time required by the existing method CCLP. The statistical test (The Friedman Test) justifies that the proposed method is significantly different from the existing methods in the paper.
机译:链接预测在动态网络中的静态网络或未来(或新)链接中发现缺少链接。其研究对于对网络演变的分析至关重要。在过去的十年中,已经在社交网络中的链接预测上提出了许多作品。在分析包括社交网络,生物网络等的复杂网络的过程中,链路预测一直在播放关键作用,在这项工作中,我们提出了一种基于Level-2节点聚类系数的链路预测的新方法。该方法定义了级别-2公共节点的概念及其相应的聚类系数,其提取种子节点对的级别-2公共邻居的聚类信息,并基于该信息计算相似度得分。我们执行了现有方法的模拟(即三种古典方法,常见的邻居,资源分配,优先附加,集群基于系数的方法(CCLP和NLC),基于局部天真的公共邻居(LNBCN),Cannistrai-Alanis-Rai (汽车),最近的Node2VEC方法)和11个现实网络数据集的提出方法。根据四个知名单点摘要统计统计数据估计,准确性估计,ROC曲线(AUROC)下的面积,精密召回曲线(AUPR)下的区域,平均精度和召回。四个度量和11个数据集的综合实验显示了所提出的方法的性能结果。还给出了所提出的方法的时间复杂性,并且是现有方法CCLP所需的时间顺序。统计测试(Friedman Test)证明了所提出的方法与本文中的现有方法显着不同。

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