链接权重预测的深度加权图嵌入

Zuo Wenbo, Liu Zhen
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引用次数: 0

摘要

图结构是现实生活中广泛存在的一种数据结构。具有良好的建模能力。社会网络、物理粒子、文本等等,都可以用图形结构表示。链接预测是图挖掘中的一项经典任务。该任务使用观察到的网络信息来预测节点对之间缺失的链路或可能出现的新链路。现有的大多数研究都是基于未加权的图。但实际上,很多场景都应该抽象为加权图,链路的权重可以反映节点之间联系的强度。本文提出了一种基于自编码器和对比学习的深度加权图嵌入方法,用于加权图的链接权重预测。在五个真实图形数据集上的实验证明了我们的方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Weighted Graph Embedding for Link Weight Prediction
Graph structure is a widely existing data structure in real life. It has good modeling ability. Social networks, physical particles, texts, and so on, all can be represented as graph structure. Link prediction is a classical task in graph mining. This task uses the information of the observed network to predict missing links or possible new links between node pairs. Most of the existing studies are based on unweighted graphs. But in fact, lots of scenarios should be abstracted as weighted graphs, and the weight of links can reflect the strength of the ties between nodes. In this paper, we propose a deep weighted graph embedding method based on autoencoder and contrastive learning for link weight prediction on weighted graphs. Experiments on five real-world graph datasets demonstrate the effectiveness of our method.
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