7   Artículos

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en línea
Luzhi Li, Yuhong Zhao, Jingyu Wang and Chuanting Zhang    
Wireless traffic prediction is critical to the intelligent operation of cellular networks, such as load balancing, congestion control, value-added service promotion, etc. However, the BTS data in each region has certain differences and privacy, and centr... ver más
Revista: Applied Sciences    Formato: Electrónico

 
en línea
Sumit Rai, Arti Kumari and Dilip K. Prasad    
Federated learning promises an elegant solution for learning global models across distributed and privacy-protected datasets. However, challenges related to skewed data distribution, limited computational and communication resources, data poisoning, and ... ver más
Revista: AI    Formato: Electrónico

 
en línea
Wenbo Zhang, Yuchen Zhao, Fangjing Li and Hongbo Zhu    
Federated learning is currently a popular distributed machine learning solution that often experiences cumbersome communication processes and challenging model convergence in practical edge deployments due to the training nature of its model information ... ver más
Revista: Applied Sciences    Formato: Electrónico

 
en línea
Riccardo Lazzarini, Huaglory Tianfield and Vassilis Charissis    
The number of Internet of Things (IoT) devices has increased considerably in the past few years, resulting in a large growth of cyber attacks on IoT infrastructure. As part of a defense in depth approach to cybersecurity, intrusion detection systems (IDS... ver más
Revista: AI    Formato: Electrónico

 
en línea
Aristeidis Karras, Christos Karras, Konstantinos C. Giotopoulos, Dimitrios Tsolis, Konstantinos Oikonomou and Spyros Sioutas    
Federated learning (FL) has emerged as a promising technique for preserving user privacy and ensuring data security in distributed machine learning contexts, particularly in edge intelligence and edge caching applications. Recognizing the prevalent chall... ver más
Revista: Information    Formato: Electrónico

 
en línea
Liangkun Yu, Xiang Sun, Rana Albelaihi and Chen Yi    
Federated learning (FL) is a collaborative machine-learning (ML) framework particularly suited for ML models requiring numerous training samples, such as Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), and Random Forest, in the co... ver más
Revista: Future Internet    Formato: Electrónico

 
en línea
Ahmed A. Al-Saedi, Veselka Boeva and Emiliano Casalicchio    
Federated Learning (FL) provides a promising solution for preserving privacy in learning shared models on distributed devices without sharing local data on a central server. However, most existing work shows that FL incurs high communication costs. To ad... ver más
Revista: Future Internet    Formato: Electrónico

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