论文标题
自适应通用通用Pagerank图神经网络
Adaptive Universal Generalized PageRank Graph Neural Network
论文作者
论文摘要
在许多重要的图形数据处理应用程序中,获取的信息既包括节点特征和图形拓扑的观察结果。图形神经网络(GNN)旨在利用这两种证据来源,但它们并没有最佳地权衡其效用,并以也是普遍的方式整合它们。在这里,普遍性是指在同质图或异性图假设上的独立性。我们通过引入新的广义Pagerank(GPR)GNN体系结构来解决这些问题,该体系结构可自适应地学习GPR权重,以共同优化节点特征和拓扑信息提取,无论节点标签在多大程度上是同质性或异性含量的程度。学习的GPR权重自动调整为节点标签模式,与初始化类型无关,从而确保了通常难以处理的标签模式的出色学习性能。此外,它们允许一个人避免特征过度光滑的功能,这一过程使信息具有非歧视性信息,而无需网络浅。我们伴随的GPR-GNN方法的理论分析是由所谓的上下文随机块模型产生的新型合成基准数据集促进的。我们还使用众所周知的基准均高粒细胞和异性数据集将GNN体系结构与几个最先进的GNN的性能与几个最先进的GNN进行了比较。结果表明,与合成和基准数据的现有技术相比,GPR-GNN提供了显着的性能提高。
In many important graph data processing applications the acquired information includes both node features and observations of the graph topology. Graph neural networks (GNNs) are designed to exploit both sources of evidence but they do not optimally trade-off their utility and integrate them in a manner that is also universal. Here, universality refers to independence on homophily or heterophily graph assumptions. We address these issues by introducing a new Generalized PageRank (GPR) GNN architecture that adaptively learns the GPR weights so as to jointly optimize node feature and topological information extraction, regardless of the extent to which the node labels are homophilic or heterophilic. Learned GPR weights automatically adjust to the node label pattern, irrelevant on the type of initialization, and thereby guarantee excellent learning performance for label patterns that are usually hard to handle. Furthermore, they allow one to avoid feature over-smoothing, a process which renders feature information nondiscriminative, without requiring the network to be shallow. Our accompanying theoretical analysis of the GPR-GNN method is facilitated by novel synthetic benchmark datasets generated by the so-called contextual stochastic block model. We also compare the performance of our GNN architecture with that of several state-of-the-art GNNs on the problem of node-classification, using well-known benchmark homophilic and heterophilic datasets. The results demonstrate that GPR-GNN offers significant performance improvement compared to existing techniques on both synthetic and benchmark data.