Knowledge Agora



Scientific Article details

Title HFSA: A Semi-Asynchronous Hierarchical Federated Recommendation System in Smart City
ID_Doc 38655
Authors Li, YHZ; Yu, HT; Zeng, Y; Pan, QQ
Title HFSA: A Semi-Asynchronous Hierarchical Federated Recommendation System in Smart City
Year 2023
Published Ieee Internet Of Things Journal, 10, 21
DOI 10.1109/JIOT.2023.3281909
Abstract In modern society, recommendation systems (RSs) already become an indispensable component, especially in smart cities. Their recommendation performance is greatly affected by the available analyzing data, but centralized massive data can cause data privacy issues. Hence, federated learning is applied to achieve a higher recommendation accuracy without sharing raw data. To improve the performance and reliability of traditional federated RSs, we propose HFSA, a semi-asynchronous hierarchical federated RS. First, from the architecture perspective, an edge server layer is involved between the central server and clients, which alleviates the server's communication pressure and enhances the recommendation model training by configuring the global aggregation frequency. Besides, a semi-asynchronous aggregation mechanism is designed. It collects local parameters as much as possible within the predefined aggregation cycle and allows the slow clients to contribute their model parameters asynchronously. The tolerate round and dynamic participation time weights shield the heterogeneity and instability of edge clients and ensure the convergence of the global model. Compared with several classical baselines, the experimental results show that HFSA can achieve a relatively better recommendation performance with high accuracy and less training time. In addition, the influential factors of HFSA are evaluated as well.
Author Keywords Training; Servers; Recommender systems; Smart cities; Feature extraction; Computer architecture; Computational modeling; Data privacy; federated recommendation; semiasynchronous aggregation; smart city
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:001098109800036
WoS Category Computer Science, Information Systems; Engineering, Electrical & Electronic; Telecommunications
Research Area Computer Science; Engineering; Telecommunications
PDF
Similar atricles
Scroll