Authors
Shiqiang Wang, Tiffany Tuor, Theodoros Salonidis, Kin K Leung, Christian Makaya, Ting He, Kevin Chan
Publication date
2019/3/10
Journal
IEEE journal on selected areas in communications
Volume
37
Issue
6
Pages
1205-1221
Publisher
IEEE
Description
Emerging technologies and applications including Internet of Things, social networking, and crowd-sourcing generate large amounts of data at the network edge. Machine learning models are often built from the collected data, to enable the detection, classification, and prediction of future events. Due to bandwidth, storage, and privacy concerns, it is often impractical to send all the data to a centralized location. In this paper, we consider the problem of learning model parameters from data distributed across multiple edge nodes, without sending raw data to a centralized place. Our focus is on a generic class of machine learning models that are trained using gradient-descent-based approaches. We analyze the convergence bound of distributed gradient descent from a theoretical point of view, based on which we propose a control algorithm that determines the best tradeoff between local update and global parameter …
Total citations
20192020202120222023202433254389439495259
Scholar articles
S Wang, T Tuor, T Salonidis, KK Leung, C Makaya… - IEEE journal on selected areas in communications, 2019