New perspectives and methods in link prediction

Ryan Lichtenwalter, Jake T. Lussier, N. Chawla
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引用次数: 686

Abstract

This paper examines important factors for link prediction in networks and provides a general, high-performance framework for the prediction task. Link prediction in sparse networks presents a significant challenge due to the inherent disproportion of links that can form to links that do form. Previous research has typically approached this as an unsupervised problem. While this is not the first work to explore supervised learning, many factors significant in influencing and guiding classification remain unexplored. In this paper, we consider these factors by first motivating the use of a supervised framework through a careful investigation of issues such as network observational period, generality of existing methods, variance reduction, topological causes and degrees of imbalance, and sampling approaches. We also present an effective flow-based predicting algorithm, offer formal bounds on imbalance in sparse network link prediction, and employ an evaluation method appropriate for the observed imbalance. Our careful consideration of the above issues ultimately leads to a completely general framework that outperforms unsupervised link prediction methods by more than 30% AUC.
链接预测的新视角和新方法
本文研究了网络中链路预测的重要因素,并为预测任务提供了一个通用的、高性能的框架。稀疏网络中的链路预测提出了一个重大挑战,因为可能形成的链路与已经形成的链路之间存在固有的不比例。以前的研究通常将此作为一个无监督的问题来处理。虽然这不是第一个探索监督学习的工作,但许多影响和指导分类的重要因素仍未被探索。在本文中,我们通过仔细研究网络观察期、现有方法的一般性、方差减少、拓扑原因和不平衡程度以及抽样方法等问题,首先激励使用监督框架来考虑这些因素。我们还提出了一种有效的基于流的预测算法,给出了稀疏网络链路预测中不平衡的形式化界限,并采用了一种适合观察到的不平衡的评估方法。我们对上述问题的仔细考虑最终导致了一个完全通用的框架,它比无监督链接预测方法的AUC高出30%以上。
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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