边缘内容增强网络嵌入

Hongcui Wang, Erwei Wang, Di Jin, Xiao Wang, Jing Wang, Dongxiao He
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引用次数: 1

摘要

网络嵌入旨在学习网络中节点的低维表示,是许多网络分析任务的关键。现有的网络嵌入方法主要是对网络拓扑或节点属性进行探索,没有对网络嵌入的边缘内容进行分析。边缘内容,例如电子邮件网络中两个用户之间的电子邮件内容,通常自然地与边缘联系在一起。它们携带了丰富的信息来描述节点之间的交互,并为学习节点的表示提供了有价值的监督。在本文中,我们提出了一种新的边缘内容增强网络嵌入模型,该模型利用边缘内容来指导网络表示学习过程。我们提供了有效的更新规则来推断模型中的参数,并对模型的正确性和收敛性进行了理论分析。大量的实验,与最先进的技术相比,表明我们提出的新方法在不同的网络分析任务上具有优越的性能。
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Edge Content Enhanced Network Embedding
Network embedding, aiming at learning the low-dimensional representations of nodes in a network, is a key to many network analysis tasks. All the current network embedding methods primarily explore the network topology or node attributes, while no effort has been made to analyze the edge content for network embedding. The edge content, such as the email content between two users in an email network, is often naturally associated with edges. They carry rich information to describe the interaction between nodes, and provide valuable supervision to learn the representations of nodes. In this paper, we propose a novel edge content enhanced network embedding model, which incorporates the edge content to guide the network representation learning process. We provide the efficient updating rules to infer the parameters in the model, along with theoretical analysis on correctness and convergence guarantees. Extensive experiments, in comparison with the state-of-the-arts, show the superior performance of our proposed new approach on different network analysis tasks.
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