Boost Decentralized Federated Learning in Vehicular Networks by Diversifying Data Sources
Dongyuan Su, Yipeng Zhou, Laizhong Cui

TL;DR
This paper introduces DFL-DDS, a novel decentralized federated learning algorithm for vehicular networks that diversifies data sources to enhance model accuracy and convergence speed.
Contribution
The paper proposes a new method to diversify data sources in decentralized federated learning for vehicles, improving convergence and accuracy.
Findings
DFL-DDS accelerates convergence compared to baselines.
DFL-DDS significantly improves model accuracy.
Theoretical proof supports the effectiveness of data source diversification.
Abstract
Recently, federated learning (FL) has received intensive research because of its ability in preserving data privacy for scattered clients to collaboratively train machine learning models. Commonly, a parameter server (PS) is deployed for aggregating model parameters contributed by different clients. Decentralized federated learning (DFL) is upgraded from FL which allows clients to aggregate model parameters with their neighbours directly. DFL is particularly feasible for vehicular networks as vehicles communicate with each other in a vehicle-to-vehicle (V2V) manner. However, due to the restrictions of vehicle routes and communication distances, it is hard for individual vehicles to sufficiently exchange models with others. Data sources contributing to models on individual vehicles may not diversified enough resulting in poor model accuracy. To address this problem, we propose the…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Vehicular Ad Hoc Networks (VANETs)
