Supervised Link Prediction Using Multiple Sources

Zhengdong Lu, Berkant Savas, Wei Tang, I. Dhillon
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引用次数: 116

Abstract

Link prediction is a fundamental problem in social network analysis and modern-day commercial applications such as Face book and My space. Most existing research approaches this problem by exploring the topological structure of a social network using only one source of information. However, in many application domains, in addition to the social network of interest, there are a number of auxiliary social networks and/or derived proximity networks available. The contribution of the paper is twofold: (1) a supervised learning framework that can effectively and efficiently learn the dynamics of social networks in the presence of auxiliary networks, (2) a feature design scheme for constructing a rich variety of path-based features using multiple sources, and an effective feature selection strategy based on structured sparsity. Extensive experiments on three real-world collaboration networks show that our model can effectively learn to predict new links using multiple sources, yielding higher prediction accuracy than unsupervised and single-source supervised models.
多源监督链路预测
链接预测是社交网络分析和现代商业应用(如facebook和My space)中的一个基本问题。大多数现有的研究都是通过只使用一个信息源来探索社会网络的拓扑结构来解决这个问题的。然而,在许多应用领域中,除了感兴趣的社会网络之外,还有许多辅助社会网络和/或派生的邻近网络可用。本文的贡献有两个方面:(1)一个监督学习框架,可以在辅助网络存在的情况下有效地学习社会网络的动态;(2)一个特征设计方案,用于使用多个源构建丰富的基于路径的特征;以及一个基于结构化稀疏性的有效特征选择策略。在三个真实协作网络上的大量实验表明,我们的模型可以有效地学习使用多个来源预测新的链接,比无监督和单源监督模型产生更高的预测精度。
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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