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Constructing Graph Node Embeddings via Discrimination of Similarity Distributions

机译:通过判别相似度分布构造图节点嵌入

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The problem of unsupervised learning node embeddings in graphs is one of the important directions in modern network science. In this work we propose a novel framework, which is aimed to find embeddings by discriminating distributions of similarities (DDoS) between nodes in the graph. The general idea is implemented by maximizing the earth mover distance between distributions of decoded similarities of similar and dissimilar nodes. The resulting algorithm generates embeddings which give a state-of-the-art performance in the problem of link prediction in real-world graphs.
机译:图中无监督学习节点的嵌入问题是现代网络科学的重要方向之一。在这项工作中,我们提出了一个新颖的框架,旨在通过区分图中节点之间的相似度分布(DDoS)来找到嵌入。通过最大化相似和不相似节点的解码相似度分布之间的推土机距离来实现总体思想。生成的算法生成嵌入,这些嵌入在现实世界的图形中的链接预测问题中具有最先进的性能。

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