Robustness of Decentralised Learning to Nodes and Data Disruption
Luigi Palmieri, Chiara Boldrini, Lorenzo Valerio, Andrea Passarella, Marco Conti, J\'anos Kert\'esz

TL;DR
This paper investigates the robustness of decentralised learning systems against node and data disruptions, demonstrating that such systems can recover and maintain classification accuracy even after significant disruptions, depending on data distribution and network connectivity.
Contribution
It provides a comprehensive analysis of how decentralised learning withstands node disruptions, highlighting the importance of data persistence and network structure for robustness.
Findings
Decentralised learning remains robust with minimal data remaining.
Knowledge retention is possible even with isolated nodes.
Network connectivity influences recovery from disruptions.
Abstract
In the vibrant landscape of AI research, decentralised learning is gaining momentum. Decentralised learning allows individual nodes to keep data locally where they are generated and to share knowledge extracted from local data among themselves through an interactive process of collaborative refinement. This paradigm supports scenarios where data cannot leave local nodes due to privacy or sovereignty reasons or real-time constraints imposing proximity of models to locations where inference has to be carried out. The distributed nature of decentralised learning implies significant new research challenges with respect to centralised learning. Among them, in this paper, we focus on robustness issues. Specifically, we study the effect of nodes' disruption on the collective learning process. Assuming a given percentage of "central" nodes disappear from the network, we focus on different…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Energy Efficient Wireless Sensor Networks · Cooperative Communication and Network Coding
MethodsFocus
