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Main Authors: Tan, Zhizhong, Zheng, Jiexin, Zhang, Kevin Qi, Wang, Wenyong
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.00257
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author Tan, Zhizhong
Zheng, Jiexin
Zhang, Kevin Qi
Wang, Wenyong
author_facet Tan, Zhizhong
Zheng, Jiexin
Zhang, Kevin Qi
Wang, Wenyong
contents The sharing of external data has become a strong demand of financial institutions, but the privacy issue has led to the difficulty of interconnecting different platforms and the low degree of data openness. To effectively solve the privacy problem of financial data in trans-border flow and sharing, to ensure that the data is available but not visible, to realize the joint portrait of all kinds of heterogeneous data of business organizations in different industries, we propose a Heterogeneous Federated Graph Neural Network (HFGNN) approach. In this method, the distribution of heterogeneous business data of trans-border organizations is taken as subgraphs, and the sharing and circulation process among subgraphs is constructed as a statistically heterogeneous global graph through a central server. Each subgraph learns the corresponding personalized service model through local training to select and update the relevant subset of subgraphs with aggregated parameters, and effectively separates and combines topological and feature information among subgraphs. Finally, our simulation experimental results show that the proposed method has higher accuracy performance and faster convergence speed than existing methods.
format Preprint
id arxiv_https___arxiv_org_abs_2505_00257
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Graph Privacy: A Heterogeneous Federated GNN for Trans-Border Financial Data Circulation
Tan, Zhizhong
Zheng, Jiexin
Zhang, Kevin Qi
Wang, Wenyong
Machine Learning
Cryptography and Security
The sharing of external data has become a strong demand of financial institutions, but the privacy issue has led to the difficulty of interconnecting different platforms and the low degree of data openness. To effectively solve the privacy problem of financial data in trans-border flow and sharing, to ensure that the data is available but not visible, to realize the joint portrait of all kinds of heterogeneous data of business organizations in different industries, we propose a Heterogeneous Federated Graph Neural Network (HFGNN) approach. In this method, the distribution of heterogeneous business data of trans-border organizations is taken as subgraphs, and the sharing and circulation process among subgraphs is constructed as a statistically heterogeneous global graph through a central server. Each subgraph learns the corresponding personalized service model through local training to select and update the relevant subset of subgraphs with aggregated parameters, and effectively separates and combines topological and feature information among subgraphs. Finally, our simulation experimental results show that the proposed method has higher accuracy performance and faster convergence speed than existing methods.
title Graph Privacy: A Heterogeneous Federated GNN for Trans-Border Financial Data Circulation
topic Machine Learning
Cryptography and Security
url https://arxiv.org/abs/2505.00257