Jung Jinhong, Yoo Jaemin, Kang U
Jeonbuk National University, Jeonju, Republic of Korea.
Seoul National University, Seoul, Republic of Korea.
PLoS One. 2022 Mar 17;17(3):e0265001. doi: 10.1371/journal.pone.0265001. eCollection 2022.
How can we model node representations to accurately infer the signs of missing edges in a signed social graph? Signed social graphs have attracted considerable attention to model trust relationships between people. Various representation learning methods such as network embedding and graph convolutional network (GCN) have been proposed to analyze signed graphs. However, existing network embedding models are not end-to-end for a specific task, and GCN-based models exhibit a performance degradation issue when their depth increases. In this paper, we propose Signed Diffusion Network (SidNet), a novel graph neural network that achieves end-to-end node representation learning for link sign prediction in signed social graphs. We propose a new random walk based feature aggregation, which is specially designed for signed graphs, so that SidNet effectively diffuses hidden node features and uses more information from neighboring nodes. Through extensive experiments, we show that SidNet significantly outperforms state-of-the-art models in terms of link sign prediction accuracy.
我们如何对节点表示进行建模,以准确推断带符号社交图中缺失边的符号?带符号社交图已引起了相当多的关注,用于对人与人之间的信任关系进行建模。已经提出了各种表示学习方法,如网络嵌入和图卷积网络(GCN)来分析带符号图。然而,现有的网络嵌入模型对于特定任务不是端到端的,并且基于GCN的模型在深度增加时会出现性能下降问题。在本文中,我们提出了带符号扩散网络(SidNet),这是一种新颖的图神经网络,可实现带符号社交图中链接符号预测的端到端节点表示学习。我们提出了一种新的基于随机游走的特征聚合方法,该方法是专门为带符号图设计的,以便SidNet有效地扩散隐藏节点特征并使用来自相邻节点的更多信息。通过大量实验,我们表明SidNet在链接符号预测准确性方面明显优于现有模型。