TL;DR
This paper introduces FedDist, a new federated learning aggregation algorithm that adapts neural network architectures to heterogeneous client data, improving personalization and generalization in pervasive computing scenarios.
Contribution
The paper proposes FedDist, an innovative aggregation method that modifies model architectures based on client dissimilarities, addressing heterogeneity in federated learning for pervasive computing.
Findings
FedDist outperforms three state-of-the-art algorithms in human activity recognition tasks.
The evaluation method effectively balances generalization and personalization.
FedDist adapts neural network structures to client-specific data characteristics.
Abstract
Pervasive computing promotes the installation of connected devices in our living spaces in order to provide services. Two major developments have gained significant momentum recently: an advanced use of edge resources and the integration of machine learning techniques for engineering applications. This evolution raises major challenges, in particular related to the appropriate distribution of computing elements along an edge-to-cloud continuum. About this, Federated Learning has been recently proposed for distributed model training in the edge. The principle of this approach is to aggregate models learned on distributed clients in order to obtain a new, more general model. The resulting model is then redistributed to clients for further training. To date, the most popular federated learning algorithm uses coordinate-wise averaging of the model parameters for aggregation. However, it has…
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