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Multi-relational Link Prediction in Heterogeneous Information Networks

机译:异构信息网络中的多关系链接预测

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Many important real-world systems, modeled naturally as complex networks, have heterogeneous interactions and complicated dependency structures. Link prediction in such networks must model the influences between heterogenous relationships and distinguish the formation mechanisms of each link type, a task which is beyond the simple topological features commonly used to score potential links. In this paper, we introduce a novel probabilistically weighted extension of the Adamic/Adar measure for heterogenous information networks, which we use to demonstrate the potential benefits of diverse evidence, particularly in cases where homogeneous relationships are very sparse. However, we also expose some fundamental flaws of traditional a priori link prediction. In accordance with previous research on homogeneous networks, we further demonstrate that a supervised approach to link prediction can enhance performance and is easily extended to the heterogeneous case. Finally, we present results on three diverse, real-world heterogeneous information networks and discuss the trends and tradeoffs of supervised and unsupervised link prediction in a multi-relational setting.
机译:自然地建模为复杂网络的许多重要的现实世界系统具有异构的交互和复杂的依赖关系结构。这种网络中的链路预测必须建模异类关系之间的影响,并区分每种链路类型的形成机制,这一任务超出了通常用于对潜在链路进行评分的简单拓扑特征。在本文中,我们介绍了针对异类信息网络的Adamic / Adar度量的一种新的概率加权扩展,用于证明各种证据的潜在好处,尤其是在同质关系非常稀疏的情况下。但是,我们还暴露了传统先验链接预测的一些基本缺陷。根据以前对同构网络的研究,我们进一步证明了一种有监督的链接预测方法可以提高性能,并且很容易扩展到异构情况。最后,我们介绍了三个不同的,现实世界中的异构信息网络的结果,并讨论了在多关系环境中有监督和无监督链路预测的趋势和权衡。

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