3   Artículos

« Anterior     Página: 1 de 1     Siguiente »

 
en línea
Qianqian Tong, Guannan Liang, Jiahao Ding, Tan Zhu, Miao Pan and Jinbo Bi    
Regularized sparse learning with the l0 l 0 -norm is important in many areas, including statistical learning and signal processing. Iterative hard thresholding (IHT) methods are the state-of-the-art for nonconvex-constrained sparse learning due to their ... ver más
Revista: Algorithms    Formato: Electrónico

 
en línea
Yankai Lv, Haiyan Ding, Hao Wu, Yiji Zhao and Lei Zhang    
Federated learning (FL) is an emerging decentralized machine learning framework enabling private global model training by collaboratively leveraging local client data without transferring it centrally. Unlike traditional distributed optimization, FL trai... ver más
Revista: Applied Sciences    Formato: Electrónico

 
en línea
Zheyi Chen, Weixian Liao, Pu Tian, Qianlong Wang and Wei Yu    
Distributed machine learning paradigms have benefited from the concurrent advancement of deep learning and the Internet of Things (IoT), among which federated learning is one of the most promising frameworks, where a central server collaborates with loca... ver más
Revista: Future Internet    Formato: Electrónico

« Anterior     Página: 1 de 1     Siguiente »