Sodhani Shagun, Qu Meng, Tang Jian
Département d'informatique et de Recherche Opérationnelle, Montreal Institute for Learning Algorithm, Université de Montréal, Montreal, QC, Canada.
HEC, Université de Montréal, Montreal, QC, Canada.
Front Big Data. 2019 Jun 6;2:6. doi: 10.3389/fdata.2019.00006. eCollection 2019.
Network embedding, which aims at learning distributed representations for nodes in networks, is a critical task with wide downstream applications. Most existing studies focus on networks with a single type of edges, whereas in many cases, the edges of networks can be derived from two opposite relationships, yielding signed networks. This paper studies network embedding for the signed network, and a novel approach called is proposed. Similar to existing methods, (riad+dge+ttention) learns node representations by predicting the sign of each edge in the network. However, many existing methods only consider the local structural information (i.e., the representations of nodes in an edge) for prediction, which can be biased especially for sparse networks. By contrast, seeks to leverage the high-order structures by drawing inspirations from the Structural Balance Theory. More specifically, for an edge linking two nodes, predicts the edge sign by considering the triangles connecting the two nodes as features. Meanwhile, an attention mechanism is proposed, which assigns different weights to the different triangles before aggregating their predictions for more precise results. We conduct experiments on several real-world signed networks, and the results prove the effectiveness of over many strong baseline approaches.
网络嵌入旨在学习网络中节点的分布式表示,是一项具有广泛下游应用的关键任务。大多数现有研究集中于具有单一类型边的网络,而在许多情况下,网络的边可以源自两种相反的关系,从而产生带符号网络。本文研究带符号网络的网络嵌入,并提出了一种名为riad+dge+ttention的新颖方法。与现有方法类似,riad+dge+ttention通过预测网络中每条边的符号来学习节点表示。然而,许多现有方法仅考虑局部结构信息(即一条边中节点的表示)进行预测,这可能存在偏差,尤其是对于稀疏网络。相比之下,riad+dge+ttention试图从结构平衡理论中汲取灵感来利用高阶结构。更具体地说,对于连接两个节点的一条边,riad+dge+ttention通过将连接这两个节点的三角形作为特征来预测边的符号。同时,提出了一种注意力机制,该机制在聚合不同三角形的预测以获得更精确结果之前,为不同的三角形分配不同的权重。我们在几个真实世界的带符号网络上进行了实验,结果证明riad+dge+ttention优于许多强大的基线方法。