Asynchronous Federated Learning Based Mobility-aware Caching in Vehicular Edge Computing
Wenhua Wang, Yu Zhao, Qiong Wu, Qiang Fan, Cui Zhang, Zhengquan Li

TL;DR
This paper proposes an asynchronous federated learning scheme tailored for vehicular edge computing, enabling privacy-preserving, mobility-aware content caching that improves prediction accuracy and caching efficiency in highly dynamic vehicular environments.
Contribution
It introduces a novel asynchronous federated learning approach that considers vehicle mobility to enhance content popularity prediction in vehicular edge caching.
Findings
AFMC outperforms baseline caching schemes in accuracy.
The scheme effectively preserves user privacy.
Mobility-aware model improves content prediction in VEC.
Abstract
Vehicular edge computing (VEC) is a promising technology to support real-time applications through caching the contents in the roadside units (RSUs), thus vehicles can fetch the contents requested by vehicular users (VUs) from the RSU within short time. The capacity of the RSU is limited and the contents requested by VUs change frequently due to the high-mobility characteristics of vehicles, thus it is essential to predict the most popular contents and cache them in the RSU in advance. The RSU can train model based on the VUs' data to effectively predict the popular contents. However, VUs are often reluctant to share their data with others due to the personal privacy. Federated learning (FL) allows each vehicle to train the local model based on VUs' data, and upload the local model to the RSU instead of data to update the global model, and thus VUs' privacy information can be protected.…
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Taxonomy
TopicsCaching and Content Delivery · Privacy-Preserving Technologies in Data · Recommender Systems and Techniques
