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A semi-supervised deep network embedding approach based on the neighborhood structure

机译:基于邻域结构的半监督深度网络嵌入方法

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摘要

Network embedding is a very important task to represent the high-dimensional network in a lowdimensional vector space, which aims to capture and preserve the network structure. Most existing network embedding methods are based on shallow models. However, actual network structures are complicated which means shallow models cannot obtain the high-dimensional nonlinear features of the network well. The recently proposed unsupervised deep learning models ignore the labels information. To address these challenges, in this paper, we propose an effective network embedding method of Structural Labeled Locally Deep Nonlinear Embedding (SLLDNE). SLLDNE is designed to obtain highly nonlinear features through utilizing deep neural network while preserving the label information of the nodes by using a semi-supervised classifier component to improve the ability of discriminations. Moreover, we exploit linear reconstruction of neighborhood nodes to enable the model to get more structural information. The experimental results of vertex classification on two real-world network datasets demonstrate that SLLDNE outperforms the other state-of-the-art methods.
机译:网络嵌入是在低维向量空间中表示高维网络的一项非常重要的任务,其目的是捕获并保留网络结构。现有的大多数网络嵌入方法都基于浅层模型。但是,实际的网络结构很复杂,这意味着浅层模型无法很好地获得网络的高维非线性特征。最近提出的无监督深度学习模型忽略了标签信息。为了解决这些挑战,在本文中,我们提出了一种有效的网络结构化方法:结构标记局部深层非线性嵌入(SLLDNE)。 SLLDNE旨在通过利用深度神经网络来获得高度非线性的特征,同时通过使用半监督分类器组件来保留节点的标签信息以提高判别能力。此外,我们利用邻域节点的线性重构使模型能够获得更多的结构信息。在两个实际网络数据集上进行顶点分类的实验结果表明,SLLDNE优于其他最新方法。

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