학술논문

Centrality-aware gossiping for distributed learning in wireless sensor networks
Document Type
Conference
Source
2022 IFIP Networking Conference (IFIP Networking) Networking Conference (IFIP Networking), 2022 IFIP. :1-6 Jun, 2022
Subject
Communication, Networking and Broadcast Technologies
Wireless communication
Wireless sensor networks
Computer aided instruction
Protocols
Distance learning
Computational modeling
Collaboration
distributed training
centrality
gossiping
federated learning
Language
ISSN
1861-2288
Abstract
In recent years, federated learning and other distributed machine learning solutions have emerged to enable collaborative synthesis of machine learning models in wireless sensor networks. However, these approaches require the exchange of large volumes of data to reach convergence, which is costly in terms of communication and computing resources. Gossiping, which naturally fits with the multihop communication paradigm featured in most wireless sensor networks application scenarios, can reduce the amount of exchanged data significantly. In this paper we investigate how the exploitation of topological information about the wireless sensor network can accelerate the convergence and also improve efficiency in terms of network resource consumption. More specifically, we introduce a gossiping learning protocol which exploits the centrality information to reduce the communication rounds needed and, thus, the amount of data exchanged. We performed a large number of experiments by considering different centrality measures and observed that exploitation of centrality information makes the convergence faster when compared to the case in which such information is not used.