链接符号预测方法与带签名网络嵌入的比较

Sandra Mitrovic, Laurent Lecoutere, Jochen De Weerdt
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引用次数: 1

摘要

在许多现实世界的网络中,明确区分正链接和负链接是很重要的,因此将观察到的网络视为有符号的。为了获得有用的特征,就像在无签名网络的情况下一样,表示学习可以用来学习表征其底层拓扑的网络的有意义的表示。已经提出了几种在签名网络上学习表示的方法,但之前还没有系统地对它们进行基准测试。因此,在本文中,我们弥补了这一文献空白,为签名网络的四种最突出的表征学习方法提供了定量和定性基准。在三个不同的数据集上的结果表明,从预测性能和运行时间的角度来看,StEM方法优于其竞争对手。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparison of Methods for Link Sign Prediction with Signed Network Embeddings
In many real-world networks, it is important to explicitly differentiate between positive and negative links, thus considering the observed networks as signed. To derive useful features, just as in the case of unsigned networks, representation learning can be used to learn meaningful representations of a network that characterize its underlying topology. Several methods for learning representations on signed networks have already been proposed but have not been systematically benchmarked together before. Hence, in this paper, we bridge this literature gap providing a quantitative and qualitative benchmark of the four most prominent representation learning methods for signed networks. Results on three different datasets for link sign prediction showcase the superiority of the StEM method over its competitors both from a predictive performance and runtime perspective.
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