GNN-Detective: Efficient Weakly Correlated Neighbors Distinguishing and Processing in GNN

Jiayang Qiao, Yutong Liu, L. Kong
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Abstract

In the field of various downstream tasks of graph learning, graph neural networks (GNNs) have achieved the state-of-the-art (SOTA) performance benefits from its special propagation mechanism. The propagation mechanism aggregates attributes from neighbor nodes to obtain expressive node representations, which is pivotal for achieving SOTA performance in various downstream tasks. However, in most graph datasets, the neighborhood of each node may contain weakly correlated neighbors (WCNs), whose attributes may impair the expressiveness of central node representations. Though efforts have been devoted to solving such problem, they merely focus on aggregating fewer or even subtracting the attributes of WCNs. However, WCNs still share some correlated information with the central node, thus the correlated information provided by WCNs is underutilized. In this work, we devote to leveraging the correlated information provided by WCNs with our proposed method, namely GNN-detective. This detective can efficiently and automatically distinguish WCNs, as well as dig out their correlated information in the graph. It is realized by a semi-supervised learning framework, where the Differential Propagation (DP) module is designed specially for information triage and utilization. This module can fully leverage the correlated information provided by WCNs, and eliminate interference of uncorrelated information. We have conducted semi-supervised node classification tasks on 9 benchmark datasets. Our proposed method is proven to achieve the best performance in processing WCNs. The problems such as over-smoothing and overfitting are also mitigated as evaluated.
GNN检测:GNN中有效的弱相关邻域识别与处理
在图学习的各种下游任务中,图神经网络(gnn)由于其特殊的传播机制而获得了最先进的性能优势。传播机制聚合邻居节点的属性以获得富有表现力的节点表示,这是在各种下游任务中实现SOTA性能的关键。然而,在大多数图数据集中,每个节点的邻域可能包含弱相关邻居(WCNs),其属性可能会损害中心节点表示的表达性。尽管人们一直在努力解决这一问题,但他们只是专注于减少wcn的聚合甚至减去其属性。然而,WCNs仍然与中心节点共享一些相关信息,因此WCNs提供的相关信息没有得到充分利用。在这项工作中,我们致力于利用我们提出的方法,即gnn - detection,来利用wcn提供的相关信息。该检测方法能够高效、自动地识别wcn,并在图中挖掘出wcn的相关信息。它采用半监督学习框架实现,其中差分传播(DP)模块专门设计用于信息分类和利用。该模块可以充分利用wcn提供的相关信息,消除不相关信息的干扰。我们对9个基准数据集进行了半监督节点分类任务。实验证明,该方法在处理小波神经网络方面具有较好的性能。在评估过程中也减轻了过度平滑和过度拟合等问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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