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FedSPDnet: Geometry-Aware Federated Deep Learning with SPDnet

About

We introduce two federated learning frameworks for the classical SPDnet model operating on symmetric positive definite (SPD) matrices with Stiefel-constrained parameters. Unlike standard Euclidean averaging, which violates orthogonality, our approach preserves geometric structure through two efficient aggregation strategies: ProjAvg, projecting arithmetic means onto the Stiefel manifold, and RLAvg, approximating tangent-space averaging via retractions and liftings. Both methods are computationally efficient, independent of the optimizer, and enable scalable federated learning for signal processing applications whose features are SPD matrices. Simulations on EEG motor imagery benchmarks show that FedSPDnet outperforms federated EEGnet in F1 score and robustness to federation and partial participation, while using fewer parameters per communication round.

Thibault Pautrel, Florent Bouchard, Ammar Mian, Guillaume Ginolhac• 2026

Related benchmarks

TaskDatasetResultRank
Motor Imagery ClassificationWeibo 2014 (test)
F1 Score43.3
6
Motor Imagery ClassificationPhysionet-MI (test)--
6
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