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RSDNE: Exploring Relaxed Similarity and Dissimilarity from Completely-imbalanced Labels for Network Embedding

机译:RSDNE:从完全不平衡的标签中探索轻松的相似性和不相似的网络嵌入

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Network embedding, aiming to project a network into a low-dimensional space, is increasingly becoming a focus of network research. Semi-supervised network embedding takes advantage of labeled data, and has shown promising performance. However, existing semi-supervised methods would get unappealing results in the completely-imbalanced label setting where some classes have no labeled nodes at all. To alleviate this, we propose a novel semi-supervised network embedding method, termed Relaxed Similarity and Dissimilarity Network Embedding (RSDNE). Specifically, to benefit from the completely-imbalanced labels, RSDNE guarantees both intra-class similarity and inter-class dissimilarity in an approximate way. Experimental results on several real-world datasets demonstrate the superiority of the proposed method.
机译:网络嵌入,旨在将网络投入到低维空间,越来越多地成为网络研究的焦点。 半监控网络嵌入利用标记数据,并显示出具有很有希望的性能。 但是,现有的半监督方法将在完全不平衡的标签设置中获得未解决的结果,其中某些类别根本没有标记的节点。 为了减轻这一点,我们提出了一种新的半监督网络嵌入方法,称为轻松的相似性和不相似性网络嵌入(RSDNE)。 具体而言,为了从完全不平衡的标签中受益,RSDNE以近似的方式保证阶级内相似性和阶级间不同的异化。 若干现实世界数据集的实验结果证明了所提出的方法的优越性。

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