用于半监督节点分类的联合图增强技术

IF 4.5 2区 计算机科学 Q1 COMPUTER SCIENCE, CYBERNETICS
Zhichang Xia;Xinglin Zhang;Lingyu Liang;Yun Li;Yuejiao Gong
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引用次数: 0

摘要

半监督节点分类是图中的一项普遍任务,它涉及根据有限的标注数据预测未标注节点的标签。目前,由于对计算能力、存储容量和隐私的要求越来越高,为这项任务训练模型的集中式方法难以为继。一种有潜力的方法是联合图学习(FGL),它允许多个客户端协作学习模型,同时维护数据隐私。然而,目前的方法无法考虑图数据的拓扑结构,也没有充分利用无标记数据。为了解决这些问题,我们提出了联合图增强(FedGA),通过结合图神经网络(GNN)模型,利用不同客户端图中存在的类似拓扑结构,增强客户端数据。此外,我们还在 FedGA 的基础上开发了 FedGA-L,它整合了伪标签和标签注入技术,以提高未标签数据的利用率。FedGA-L 允许将伪标签作为附加信息使用,以加强数据扩增,进一步提高节点分类的准确性。我们通过在多个数据集上进行实验,评估了 FedGA 和 FedGA-L 的有效性。结果表明,它们在解决典型分类任务时的准确性得到了提高,而且与各种联合学习(FL)框架兼容。在广泛认可的图学习数据集上,我们的准确率比普通联合学习算法提高了 5%-7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Graph Augmentation for Semisupervised Node Classification
Semisupervised node classification is a prevalent task on graphs, which involves predicting the labels of unlabeled nodes based on limited labeled data available. At present, centralized approaches to training models for this task are unsustainable due to the increasing demand for computational power, storage capacity, and privacy. An approach of potential is federated graph learning (FGL), which allows multiple clients to collaborate on learning a model while maintaining data privacy. However, current methods suffer from the inability to consider the topology of the graph data and inadequate use of unlabeled data. To address these issues, we propose federated graph augmentation (FedGA) by combining graph neural network (GNN) models to utilize similar topologies existing in different client graphs and augment the client data. Furthermore, we develop FedGA-L based on FedGA, which integrates pseudolabeling and label-injection to improve the utilization of unlabeled data. FedGA-L allows pseudolabels to be used as additional information to enhance data augmentation and further improve the accuracy of node classification. We evaluate the effectiveness of FedGA and FedGA-L through experiments on multiple datasets. The results demonstrate improved accuracy in solving typical classification tasks and their compatibility with a variety of federated learning (FL) frameworks. On widely recognized datasets for graph learning, we achieve an accuracy improvement of 5%–7% compared to vanilla federated learning algorithms.
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来源期刊
IEEE Transactions on Computational Social Systems
IEEE Transactions on Computational Social Systems Social Sciences-Social Sciences (miscellaneous)
CiteScore
10.00
自引率
20.00%
发文量
316
期刊介绍: IEEE Transactions on Computational Social Systems focuses on such topics as modeling, simulation, analysis and understanding of social systems from the quantitative and/or computational perspective. "Systems" include man-man, man-machine and machine-machine organizations and adversarial situations as well as social media structures and their dynamics. More specifically, the proposed transactions publishes articles on modeling the dynamics of social systems, methodologies for incorporating and representing socio-cultural and behavioral aspects in computational modeling, analysis of social system behavior and structure, and paradigms for social systems modeling and simulation. The journal also features articles on social network dynamics, social intelligence and cognition, social systems design and architectures, socio-cultural modeling and representation, and computational behavior modeling, and their applications.
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