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Federated Learning over Coupled Graphs

Graphs are widely used to represent the relations among entities. When one owns the complete data, an entire graph can be easily built, therefore performing analysis on the graph is straightforward. However, in many scenarios, it is impractical to centralize the data due to data privacy concerns. An...

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Published in:arXiv.org 2023-01
Main Authors: Lei, Runze, Wang, Pinghui, Zhao, Junzhou, Lin, Lan, Tao, Jing, Deng, Chao, Feng, Junlan, Wang, Xidian, Guan, Xiaohong
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Wang, Pinghui
Zhao, Junzhou
Lin, Lan
Tao, Jing
Deng, Chao
Feng, Junlan
Wang, Xidian
Guan, Xiaohong
description Graphs are widely used to represent the relations among entities. When one owns the complete data, an entire graph can be easily built, therefore performing analysis on the graph is straightforward. However, in many scenarios, it is impractical to centralize the data due to data privacy concerns. An organization or party only keeps a part of the whole graph data, i.e., graph data is isolated from different parties. Recently, Federated Learning (FL) has been proposed to solve the data isolation issue, mainly for Euclidean data. It is still a challenge to apply FL on graph data because graphs contain topological information which is notorious for its non-IID nature and is hard to partition. In this work, we propose a novel FL framework for graph data, FedCog, to efficiently handle coupled graphs that are a kind of distributed graph data, but widely exist in a variety of real-world applications such as mobile carriers' communication networks and banks' transaction networks. We theoretically prove the correctness and security of FedCog. Experimental results demonstrate that our method FedCog significantly outperforms traditional FL methods on graphs. Remarkably, our FedCog improves the accuracy of node classification tasks by up to 14.7%.
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subjects Communication networks
Federated learning
Graphs
title Federated Learning over Coupled Graphs
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