FedBFGCN: A Graph Federated Learning Framework Based on Balanced Channel Attention and Cross-Layer Feature Fusion Convolution

被引:0
|
作者
Wang, Hefei [1 ]
Gu, Ruichun [1 ]
Wang, Jingyu [1 ]
Zhang, Xiaolin [1 ]
Wei, Hui [1 ]
机构
[1] Inner Mongolia Univ Sci & Technol, Sch Digital Intelligence Ind, Baotou 014010, Peoples R China
来源
IEEE ACCESS | 2025年 / 13卷
基金
中国国家自然科学基金;
关键词
Federated learning; Data privacy; Convolution; Training; Data models; Feature extraction; Electronic commerce; Accuracy; Computational modeling; Attention mechanisms; Graph federated learning; balanced channel attention mechanism; cross-layer feature fusion convolution; GCN; NETWORK;
D O I
10.1109/ACCESS.2025.3536001
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Graph Federated Learning (GFL) is an emerging distributed training paradigm that combines federated learning with graph data. Due to its ability to effectively handle complex and heterogeneous graph data while protecting user privacy, GFL has shown great potential in processing various types of graph structures and has been proven effective in a wide range of applications. However, existing methods normally assign equal attention to all nodes within a single graph, focusing too much on the information of neighboring nodes, even if some nodes are more important in the graph structure or task (such as high consumption users or popular products), which inevitably leads to inefficient node embedding. To address this issue, this paper proposes an innovative graph federated learning framework called FedBFGCN (Graph Federated Learning Based on Balanced Channel Attention and Cross-Layer Feature Fusion Convolution) to optimize the embedding and analysis efficiency of graph data. This proposed framework converts single graph data into node features and adjacency matrices for processing, and combines a customized Cross-Layer Feature Fusion Convolution(CLF) and an improved Attention Mechanism that is Balanced Channel Attention Mechanism (BCAM). The FedBFGCN improves the attention to important nodes by dynamically weighting and adjusting the weights of features through BCAM; Using CLF effectively integrates its own features with neighbor information, enhancing feature expression capability. Through the organic fusion of these two modules, the FedBFGCN achieves efficient, robust, and more comprehensive node embedding representation, demonstrating excellent performance in node classification and prediction tasks. In addition, this framework also uses homomorphic encryption methods to enhance privacy protection and improve data security. The FedBFGCN was evaluated on standard reference network datasets (Cora, Citeseer, Polblogs), and experimental results showed that it has lower losses and higher performance in multiple aspects. This framework is capable of addressing various challenges in graph federated learning, significantly improving learning effectiveness and application capabilities. This study not only provides new ideas for graph federated learning and GCN, but also demonstrates its enormous potential in practical applications.
引用
收藏
页码:21980 / 21991
页数:12
相关论文
共 50 条
  • [21] K-Core Structure Feature Encoding-Based Enhanced Federated Graph Learning Framework
    Li, Dongdong
    Liu, Bo
    Yang, Chunqiao
    Shi, Fang
    Peng, Yunfei
    Lin, Weiwei
    IEEE TRANSACTIONS ON EMERGING TOPICS IN COMPUTATIONAL INTELLIGENCE, 2025,
  • [22] Road Detection via a Dual-Task Network Based on Cross-Layer Graph Fusion Modules
    Hu, Zican
    Shi, Wurui
    Liu, Hongkun
    Chen, Xueyun
    IEEE GEOSCIENCE AND REMOTE SENSING LETTERS, 2022, 19
  • [23] CFFM: Multi-task lane object detection method based on cross-layer feature fusion
    Zhang, Yunzuo
    Zheng, Yuxin
    Tu, Zhiwei
    Wu, Cunyu
    Zhang, Tian
    EXPERT SYSTEMS WITH APPLICATIONS, 2024, 257
  • [24] Saliency Detection Based on Context-aware Cross-layer Feature Fusion for Light Field Images
    Deng H.
    Cao Z.
    Xiang S.
    Wu J.
    Dianzi Yu Xinxi Xuebao/Journal of Electronics and Information Technology, 2023, 45 (12): : 4489 - 4498
  • [25] Federated learning based multi-task feature fusion framework for code expressive semantic extraction
    Deng, Fengyang
    Fu, Cai
    Qian, Yekui
    Yang, Jia
    He, Shuai
    Xu, Hao
    SOFTWARE-PRACTICE & EXPERIENCE, 2022, 52 (08): : 1849 - 1866
  • [26] Spatio-temporal weight Tai Chi motion feature extraction based on deep network cross-layer feature fusion
    Wu, Naiqiu
    Shi, Yang
    EAI ENDORSED TRANSACTIONS ON SCALABLE INFORMATION SYSTEMS, 2022, 9 (34)
  • [27] SAR Image Ship Target Detection Based on Receptive Field Enhancement Module and Cross-Layer Feature Fusion
    Zheng, Haokun
    Xue, Xiaorong
    Yue, Run
    Liu, Cong
    Liu, Zheyu
    ELECTRONICS, 2024, 13 (01)
  • [28] A lightweight image-level segmentation method for steel surface defects based on cross-layer feature fusion
    Wang, Peng
    Li, Liangliang
    Sha, Baolin
    Li, Xiaoyan
    Lue, Zhigang
    INSIGHT, 2024, 66 (03) : 167 - 173
  • [29] Depth Estimation Using a Self-Supervised Network Based on Cross-Layer Feature Fusion and the Quadtree Constraint
    Tian, Fangzheng
    Gao, Yongbin
    Fang, Zhijun
    Fang, Yuming
    Gu, Jia
    Fujita, Hamido
    Hwang, Jenq-Neng
    IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS FOR VIDEO TECHNOLOGY, 2022, 32 (04) : 1751 - 1766
  • [30] MG-Net: A fetal brain tissue segmentation method based on multiscale feature fusion and graph convolution attention mechanisms
    Qi, Keying
    Yan, Chenchen
    Niu, Donghao
    Zhang, Bing
    Liang, Dong
    Long, Xiaojing
    COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2024, 257