A Time Aware Method for Predicting Dull Nodes and Links in Evolving Networks for Data Cleaning

Niladri Sett, Subhrendu Chattopadhyay, Sanasam Ranbir Singh, Sukumar Nandi
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引用次数: 2

Abstract

Existing studies on evolution of social network largely focus on addition of new nodes and links in the network. However, as network evolves, existing relationships degrade and break down, and some nodes go to hibernation or decide not to participate in any kind of activities in the network where it belongs. Such nodes and links, which we refer as "dull", may affect analysis and prediction tasks in networks. This paper formally defines the problem of predicting dull nodes and links at an early stage, and proposes a novel time aware method to solve it. Pruning of such nodes and links is framed as "network data cleaning" task. As the definitions of dull node and link are non-trivial and subjective, a novel scheme to label such nodes and links is also proposed here. Experimental results on two real network datasets demonstrate that the proposed method accurately predicts potential dull nodes and links. This paper further experimentally validates the need for data cleaning by investigating its effect on the well-known "link prediction" problem.
演化网络中钝节点和钝链路预测的时间感知方法
现有的关于社会网络进化的研究主要集中于在网络中添加新的节点和链接。然而,随着网络的发展,现有的关系会退化和破裂,一些节点会进入休眠状态,或者决定不参与其所属网络的任何活动。这样的节点和链接,我们称之为“迟钝”,可能会影响网络中的分析和预测任务。本文形式化地定义了早期钝节点和钝链路的预测问题,并提出了一种新的时间感知方法来解决该问题。这种节点和链路的修剪被定义为“网络数据清理”任务。鉴于钝节点和钝链路的定义具有非平凡性和主观性,本文还提出了一种标记钝节点和钝链路的新方案。在两个真实网络数据集上的实验结果表明,该方法能够准确地预测潜在的迟钝节点和链路。本文通过研究数据清洗对众所周知的“链接预测”问题的影响,进一步通过实验验证了数据清洗的必要性。
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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