Data-Driven and Privacy-Preserving Cooperation in Decentralized Learning
Paper i proceeding, 2024

Decentralized learning scenarios offer the opportunity of a flexible cooperation between learning nodes; in other words, each node may cooperate with an arbitrary subset of its peers. In such scenarios, we tackle the problem of choosing the nodes that cooperate towards the training of a machine learning model, hence, tweaking the cooperation graph connecting the nodes themselves. We propose and evaluate a data-driven approach to the problem, by proposing three metrics to choose the edges to activate in the cooperation graph, and an efficient iterative algorithm exploiting them. Through our performance evaluation, which leverages state-of-the-art datasets and neural network architectures, we find that privacypreserving metrics accounting for the difference between local datasets are very effective in identifying the best edges to activate to improve the efficiency of model training without hurting performance.

Decentralized learning

Cooperation

Data communication and processing

Privacy preservation

Författare

Francesco Malandrino

Consorzio Nazionale Interuniversitario per le Telecomunicazioni (CNIT)

Carlos Barroso Fernandez

Universidad Carlos III de Madrid

Carlos J.Bernardos Cano

Universidad Carlos III de Madrid

Carla Fabiana Chiasserini

Politecnico di Torino

Chalmers, Data- och informationsteknik, Nätverk och system

Antonio De La Oliva

Universidad Carlos III de Madrid

Mahyar Onsori

Politecnico di Torino

Proceedings - Conference on Local Computer Networks, LCN


9798350388008 (ISBN)

49th IEEE Conference on Local Computer Networks, LCN 2024
Caen, France,

Ämneskategorier (SSIF 2025)

Datavetenskap (datalogi)

Datorsystem

DOI

10.1109/LCN60385.2024.10639653

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Senast uppdaterat

2025-05-19