作者
Lucas Pacheco, Torsten Braun, Denis Rosário, Antonio Di Maio, Eduardo Cerqueira
发表日期
2024/5/9
期刊
IEEE access
出版商
IEEE
简介
Federated Learning (FL) has rapidly become a crucial paradigm for training Machine Learning (ML) models when datasets are spread across several devices without compromising the privacy of the data owners. In vehicular networks, FL can be used to train driving models and object detection and classification over sensitive datasets to continuously improve user experience and driving safety. However, the majority of FL implementations cannot efficiently filter malicious vehicular users and low-quality contributions. This article proposes Distributed OT-based Federated Learning (DOTFL), an aggregation mechanism based on the clustering of the received trained Neural Networks Neural Network (NN) at the vehicular devices and on outlier detection. The proposed mechanism can detect malicious contributions by comparing them to previously received contributions and following a clustering approach …
学术搜索中的文章
L Pacheco, T Braun, D Rosário, A Di Maio, E Cerqueira - IEEE access, 2024