FedSVD: Adaptive Orthogonalization for Private Federated Learning with LoRA
Abstract
Low-Rank Adaptation (LoRA), which introduces a product of two trainable low-rank matrices into frozen pre-trained weights, is widely used for efficient fine-tuning of language models in federated learning (FL). However, when combined with differentially private stochastic gradient descent (DP-SGD), LoRA faces substantial noise amplification: DP-SGD perturbs per-sample gradients, and the matrix multiplication of the LoRA update ($BA$) intensifies this effect. Freezing one matrix (*e.g.*, $A$) reduces the noise but restricts model expressiveness, often resulting in suboptimal adaptation. To address this, we propose $\texttt{FedSVD}$, a simple yet effective method that introduces a global reparameterization based on singular value decomposition (SVD). In our approach, each client optimizes only the $B$ matrix and transmits it to the server. The server aggregates the $B$ matrices, computes the product $BA$ using the previous $A$, and refactorizes the result via SVD. This yields a new adaptive $A$ composed of the orthonormal right singular vectors of $BA$, and an updated $B$ containing the remaining SVD components. This reparameterization avoids quadratic noise amplification, while allowing $A$ to better capture the principal directions of the aggregate updates. Moreover, the orthonormal structure of $A$ bounds the gradient norms of $B$ and preserves more signal under DP-SGD, as confirmed by our theoretical analysis. As a result, $\texttt{FedSVD}$ consistently improves stability and performance across a variety of privacy settings and benchmarks, outperforming relevant baselines under both private and non-private regimes.
Cite
Text
Lee et al. "FedSVD: Adaptive Orthogonalization for Private Federated Learning with LoRA." Advances in Neural Information Processing Systems, 2025.Markdown
[Lee et al. "FedSVD: Adaptive Orthogonalization for Private Federated Learning with LoRA." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/lee2025neurips-fedsvd/)BibTeX
@inproceedings{lee2025neurips-fedsvd,
title = {{FedSVD: Adaptive Orthogonalization for Private Federated Learning with LoRA}},
author = {Lee, Seanie and Park, Sangwoo and Lee, Dong Bok and Wagner, Dominik and Seong, Haebin and Bocklet, Tobias and Lee, Juho and Hwang, Sung Ju},
booktitle = {Advances in Neural Information Processing Systems},
year = {2025},
url = {https://mlanthology.org/neurips/2025/lee2025neurips-fedsvd/}
}