Overcoming the Link Prediction Limitation in Sparse Networks using Community Detection

Q4 Computer Science
Mohammad Pouya Salvati, S. Sulaimany, Jamshid Bagherzadeh Mohasefi
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引用次数: 0

Abstract

Link prediction seeks to detect missing links and the ones that may be established in the future given the network structure or node features. Numerous methods have been presented for improving the basic unsupervised neighbourhood-based methods of link prediction. A major issue confronted by all these methods, is that many of the available networks are sparse. This results in high volume of computation, longer processing times, more memory requirements, and more poor results. This research has presented a new, distinct method for link prediction based on community detection in large-scale sparse networks. Here, the communities over the network are first identified, and the link prediction operations are then performed within each obtained community using neighbourhood-based methods. Next, a new method for link prediction has been carried out between the clusters with a specified manner for maximal utilization of the network capacity. Utilized community detection algorithms are Best partition, Link community, Info map and Girvan-Newman, and the datasets used in experiments are Email, HEP, REL, Wikivote, Word and PPI. For evaluation of the proposed method, three measures have been used: precision, computation time and AUC. The results obtained over different datasets demonstrate that extra calculations have been prevented, and precision has been increased. In this method, runtime has also been reduced considerably. Moreover, in many cases Best partition community detection method has good results compared to other community detection algorithms.
利用团体检测克服稀疏网络中的链路预测限制
链路预测旨在检测缺失的链路,以及在给定网络结构或节点特征的情况下将来可能建立的链路。人们提出了许多方法来改进基于无监督邻域的基本链路预测方法。所有这些方法面临的一个主要问题是,许多可用的网络是稀疏的。这将导致高计算量、更长的处理时间、更多的内存需求和更差的结果。该研究提出了一种新的、独特的基于社区检测的大规模稀疏网络链路预测方法。在这里,首先识别网络上的社区,然后使用基于邻居的方法在每个获得的社区内执行链路预测操作。其次,提出了一种新的链路预测方法,以最大限度地利用网络容量。使用的社区检测算法有Best partition、Link community、Info map和Girvan-Newman,实验使用的数据集有Email、HEP、REL、Wikivote、Word和PPI。本文采用精度、计算时间和AUC三个指标对该方法进行了评价。在不同的数据集上获得的结果表明,已经避免了额外的计算,并且精度得到了提高。在这种方法中,运行时间也大大减少。此外,在许多情况下,与其他社区检测算法相比,最佳分区社区检测方法具有良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Information Systems and Telecommunication
Journal of Information Systems and Telecommunication Computer Science-Information Systems
CiteScore
0.80
自引率
0.00%
发文量
24
审稿时长
24 weeks
期刊介绍: This Journal will emphasize the context of the researches based on theoretical and practical implications of information Systems and Telecommunications. JIST aims to promote the study and knowledge investigation in the related fields. The Journal covers technical, economic, social, legal and historic aspects of the rapidly expanding worldwide communications and information industry. The journal aims to put new developments in all related areas into context, help readers broaden their knowledge and deepen their understanding of telecommunications policy and practice. JIST encourages submissions that reflect the wide and interdisciplinary nature of the subject and articles that integrate technological disciplines with social, contextual and management issues. JIST is planned to build particularly its reputation by publishing qualitative researches and it welcomes such papers. This journal aims to disseminate success stories, lessons learnt, and best practices captured by researchers in the related fields.
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