Network embedding is aimed at mapping nodes in a network into low-dimensional vector representations. Graph Neural Networks (GNNs) have received widespread attention and lead to state-of-the-art performance in learning node representations. However, most GNNs only work in unsigned networks, where only positive links exist. It is not trivial to transfer these models to signed directed networks, which are widely observed in the real world yet less studied. In this paper, we first review two fundamental sociological theories (i.e., status theory and balance theory) and conduct empirical studies on real-world datasets to analyze the social mechanism in signed directed networks. Guided by related sociological theories, we propose a novel Signed Directed Graph Neural Networks model named SDGNN to learn node embeddings for signed directed networks. The proposed model simultaneously reconstructs link signs, link directions, and signed directed triangles. We validate our model's effectiveness on five real-world datasets, which are commonly used as the benchmark for signed network embedding. Experiments demonstrate the proposed model outperforms existing models, including feature-based methods, network embedding methods, and several GNN methods.
翻译:嵌入网络的目的是在网络中绘制节点,将其纳入低维矢量表示; 图形神经网络(GNNS)受到广泛关注,并导致在学习节点表示方面最先进的表现; 然而,大多数GNNS只在未签署的网络中工作,只有积极的联系存在; 将这些模型转移到在现实世界得到广泛观察但研究较少的经签署的定向网络中。 在本文件中,我们首先审查两个基本的社会学理论(即现状理论和平衡理论),并对真实世界数据集进行实证研究,以分析经签署的网络中的社会机制。 在相关的社会学理论的指导下,我们提出一个名为SDGNNN的新型直接图形神经网络模型,以学习经签署的定向网络的节点嵌入。 拟议的模型同时重建链接符号、链接方向和签署的定向三角关系。 我们验证了我们的模型在五个真实世界数据集上的有效性,这五个数据库通常被用作签署网络嵌入的基准。 实验展示了拟议的模型超越现有模型, 包括基于地貌的方法、网络嵌入方法和若干GNNN方法。