Impact of network topology on the performance of Decentralized Federated Learning
Luigi Palmieri, Chiara Boldrini, Lorenzo Valerio, Andrea, Passarella, Marco Conti

TL;DR
This paper investigates how different network topologies influence decentralized federated learning performance, highlighting the roles of centrality metrics and the challenges of knowledge transfer across network structures.
Contribution
It provides a detailed analysis of the impact of various network structures and node properties on the effectiveness of decentralized federated learning systems.
Findings
Global centrality metrics correlate with better learning performance.
Local clustering coefficient is less predictive of learning success.
Peripheral-to-central knowledge transfer faces dilution challenges.
Abstract
Fully decentralized learning is gaining momentum for training AI models at the Internet's edge, addressing infrastructure challenges and privacy concerns. In a decentralized machine learning system, data is distributed across multiple nodes, with each node training a local model based on its respective dataset. The local models are then shared and combined to form a global model capable of making accurate predictions on new data. Our exploration focuses on how different types of network structures influence the spreading of knowledge - the process by which nodes incorporate insights gained from learning patterns in data available on other nodes across the network. Specifically, this study investigates the intricate interplay between network structure and learning performance using three network topologies and six data distribution methods. These methods consider different vertex…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Stochastic Gradient Optimization Techniques
