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Experimental analyses on 2-hop-based and 3-hop-based link prediction algorithms

机译:基于2跳和3跳的链路预测算法的实验分析

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Link prediction is a significant and challenging task in network science. The majority of known methods are similarity-based, which assign similarity indices for node pairs and assume that two nodes of larger similarity have higher probability to be connected by a link. Due to their simplicity, interpretability and high efficiency, similarity-based methods, in particular those based only on local information, have found successful applications on disparate fields. An intuitive consensus is that two nodes sharing common neighbors are likely to have a link, while some recent evidences indicate that the number of 3-hop paths more accurately predicts missing links than the number of common neighbors. In this paper, we implement extensive experimental comparisons between 2-hop-based and 3-hop-based similarity indices on 137 real networks. Overall speaking, the class of Cannistraci-Hebb indices performs the best among all considered candidates. In addition, 3-hop-based indices outperform 2-hop-based indices on ROC-AUC, and 3-hop-based indices and 2-hop-based indices are competitive on precision. Further statistical results show that 3-hop-based indices are more suitable for disassortative networks with lower densities and lower average clustering coefficients. (C) 2020 Elsevier B.V. All rights reserved.
机译:链路预测是网络科学中一项重要而富有挑战性的任务。大多数已知方法都是基于相似性的,它们为节点对分配相似性指数,并假设相似性较大的两个节点通过链接连接的概率较高。基于相似性的方法,特别是那些仅基于局部信息的方法,由于其简单、可解释性和高效率,已经在不同的领域得到了成功的应用。一个直观的共识是,共享公共邻居的两个节点可能有一条链路,而最近的一些证据表明,三跳路径的数量比公共邻居的数量更准确地预测丢失的链路。在本文中,我们在137个真实网络上对基于2跳和基于3跳的相似性指数进行了广泛的实验比较。总体而言,Cannistraci-Hebb指数在所有被考虑的候选人中表现最好。此外,基于ROC-AUC的三跳指数优于基于二跳的指数,基于三跳的指数和基于二跳的指数在精度上具有竞争力。进一步的统计结果表明,基于三跳的索引更适合于密度较低、平均聚类系数较低的非分支网络。(C) 2020爱思唯尔B.V.版权所有。

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