论文标题

监督图表学习的差异边缘分区模型

A Variational Edge Partition Model for Supervised Graph Representation Learning

论文作者

He, Yilin, Wang, Chaojie, Zhang, Hao, Chen, Bo, Zhou, Mingyuan

论文摘要

图形神经网络(GNNS)通过边缘传播节点特征并学习如何在标签监督下转换聚合特征,在节点级别和图形级别的分类任务方面取得了巨大的成功。但是,GNN通常将图形结构视为给定的,而忽略了边缘的形成方式。本文介绍了一个图生成过程,以模拟观察到的边缘如何通过在一组重叠节点群落上汇总节点相互作用来生成的,每个节点相互作用通过逻辑或机制促进边缘。基于此生成模型,我们将每个边缘分配到多个社区特定的加权边缘的总结中,并使用它们来定义社区特定的GNN。提出了一个分流推理框架,以共同学习基于GNN的推理网络,该网络将边缘分配到不同社区,这些特定于社区的GNN和基于GNN的预测指标,该预测指标结合了最终分类任务的社区特异性GNN。对现实世界图数据集的广泛评估已经验证了所提出的方法在学习节点级别和图形级分类任务方面的判别性表示方面的有效性。

Graph neural networks (GNNs), which propagate the node features through the edges and learn how to transform the aggregated features under label supervision, have achieved great success in supervised feature extraction for both node-level and graph-level classification tasks. However, GNNs typically treat the graph structure as given and ignore how the edges are formed. This paper introduces a graph generative process to model how the observed edges are generated by aggregating the node interactions over a set of overlapping node communities, each of which contributes to the edges via a logical OR mechanism. Based on this generative model, we partition each edge into the summation of multiple community-specific weighted edges and use them to define community-specific GNNs. A variational inference framework is proposed to jointly learn a GNN-based inference network that partitions the edges into different communities, these community-specific GNNs, and a GNN-based predictor that combines community-specific GNNs for the end classification task. Extensive evaluations on real-world graph datasets have verified the effectiveness of the proposed method in learning discriminative representations for both node-level and graph-level classification tasks.

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