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Learning Network-to-Network Model for Content-rich Network Embedding

机译:学习内容丰富的网络嵌入网络到网络模型

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Recently, network embedding (NE) has achieved great successes in learning low dimensional representations for network nodes and has been increasingly applied to various network analytic tasks. In this paper, we consider the representation learning problem for content-rich networks whose nodes are associated with rich content information. Content-rich network embedding is challenging in fusing the complex structural dependencies and the rich contents. To tackle the challenges, we propose a generative model, Network-to-Network Network Embedding (Net2Net-NE) model, which can effectively fuse the structure and content information into one continuous embedding vector for each node. Specifically, we regard the content-rich network as a pair of networks with different modalities, i.e., content network and node network. By exploiting the strong correlation between the focal node and the nodes to whom it is connected to, a multilayer recursively composable encoder is proposed to fuse the structure and content information of the entire ego network into the egocentric node embedding. Moreover, a cross-modal decoder is deployed to mapping the egocentric node embeddings into node identities in an interconnected network. By learning the identity of each node according to its content, the mapping from content network to node network is learned in a generative manner. Hence the latent encoding vectors learned by the Net2Net-NE can be used as effective node embeddings. Extensive experimental results on three real-world networks demonstrate the superiority of Net2Net-NE over state-of-the-art methods.
机译:最近,网络嵌入(NE)在学习网络节点的低维表示方面取得了巨大成功,并且越来越多地应用于各种网络分析任务。在本文中,我们考虑了富含内容的网络的表示学习问题,其节点与丰富的内容信息相关联。富含内容的网络嵌入在融合复杂的结构依赖关系和丰富的内容方面挑战。为了解决挑战,我们提出了一种生成模型,网络到网络网络嵌入(Net2Net-NE)模型,可以有效地将结构和内容信息融合到每个节点的一个连续嵌入向量中。具体地,我们将内容丰富的网络视为具有不同模态,即内容网络和节点网络的一对网络。通过利用焦点节点和连接到的节点之间的强相关性,提出了一种递归可交换编码器,以使整个自我网络的结构和内容信息融合到Enocentric节点嵌入中。此外,部署跨模型解码器以将Enocentric节点嵌入到互连网络中的节点标识映射。通过根据其内容学习每个节点的标识,以生成方式从内容网络到节点网络的映射。因此,Net2Net-NE学习的潜在编码向量可以用作有效节点嵌入品。三个真实网络的广泛实验结果展示了Net2Net-NE的优越性,通过最先进的方法。

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