Alapfogalmak
Utilizing Federated Learning to enhance IoT security against DDoS attacks.
Kivonat
The content discusses the use of Federated Learning to improve IoT security against DDoS attacks. It introduces a novel strategy leveraging Federated Learning to detect and mitigate DDoS attacks in IoT environments. The study proposes deep autoencoder models for data dimensionality reduction and innovative aggregation algorithms like FedAvg and FedAvgM. Evaluation metrics such as accuracy, precision, recall, F1-score, and more are employed to assess the model's performance using the N-BaIoT dataset.
Statisztikák
Various metrics, including true positive rate, false positive rate, and F1-score are employed to evaluate the model.
The dataset utilized in this research is N-BaIoT.
The FedAvgM aggregation algorithm outperforms FedAvg in non-IID datasets.
Idézetek
"Federated Learning holds promise in addressing the security needs of large-scale and heterogeneous IoT networks."
"Our proposed framework aims to enable real-time detection and timely response to DDoS attacks without compromising sensitive data privacy."
"The evaluation results demonstrate that the FedAvgM aggregation algorithm outperforms FedAvg."