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AAANE: Attention-Based Adversarial Autoencoder for Multi-scale Network Embedding

机译:AZAN:基于关注的广告信息嵌入多尺度网络的广告outcode

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Network embedding represents nodes in a continuous vector space and preserves structure information from a network. Existing methods usually adopt a "one-size-fits-all" approach when concerning multi-scale structure information, such as first- and second-order proximity of nodes, ignoring the fact that different scales play different roles in embedding learning. In this paper, we propose an Attention-based Adversarial Autoencoder Network Embedding (AAANE) framework, which promotes the collaboration of different scales and lets them vote for robust representations. The proposed AAANE consists of two components: (1) an attention-based autoencoder that effectively capture the highly non-linear network structure, which can de-emphasize irrelevant scales during training, and (2) an adversarial regularization guides the autoencoder in learning robust representations by matching the posterior distribution of the latent embeddings to a given prior distribution. Experimental results on real-world networks show that the proposed approach outperforms strong baselines.
机译:网络嵌入表示连续矢量空间中的节点,并从网络保留结构信息。当有关多尺度结构信息时,现有方法通常采用“单尺寸适合 - 所有”方法,例如节点的第一和二阶和二阶接近,忽略不同尺度在嵌入学习中发挥不同角色的事实。在本文中,我们提出了一种基于关注的对抗性AutoEncoder网络嵌入(AAANE)框架,其促进了不同尺度的协作,并允许他们投入强大的表示。所提出的AAANE由两个组成部分组成:(1)基于注意的IOViCoder,有效地捕获高度非线性网络结构,可以在训练期间脱离不相关的尺度,并且(2)对抗性正则化引导自动化器在学习中学习鲁棒通过将潜在嵌入的后部分布与给定的先前分配匹配来表示。实验结果对真实网络的实验结果表明,建议的方法优于强大的基线。

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