Communication-efficient federated learning via regularized sparse random networks

Mestoukirdi, Mohamad; Esrafilian, Omid; Gesbert, David; Li, Qianrui; Gresset, Nicolas
Submitted to ArXiV, 28 February 2024

 

This work presents a new method for enhancing communication efficiency in stochastic Federated Learning that trains over-parameterized random networks. In this setting, a binary mask is optimized instead of the model weights, which are kept fixed. The mask characterizes a sparse sub-network that is able to generalize as good as a smaller target network. Importantly, sparse binary masks are exchanged rather than the floating point weights in traditional federated learning, reducing communication cost to at most 1 bit per parameter (Bpp). We show that previous state of the art stochastic methods fail to find sparse networks that can reduce the communication and storage overhead using consistent loss objectives. To address this, we propose adding a regularization term to local objectives that acts as a proxy of the transmitted masks entropy, therefore encouraging sparser solutions by eliminating redundant features across sub-networks. Extensive empirical experiments demonstrate significant improvements in communication and memory efficiency of up to five magnitudes compared to the literature, with minimal performance degradation in validation accuracy in some instances.


Type:
Conférence
Date:
2024-02-28
Department:
Systèmes de Communication
Eurecom Ref:
7444
Copyright:
© EURECOM. Personal use of this material is permitted. The definitive version of this paper was published in Submitted to ArXiV, 28 February 2024 and is available at :

PERMALINK : https://www.eurecom.fr/publication/7444