Fedpower: privacy-preserving distributed eigenspace estimation


연구 분야: Databases



학회: Machine Learning


초록

Eigenspace estimation is a fundamental tool in data analytics, which has found applications in PCA, dimension reduction, and clustering, among others. The modern machine learning community usually involves data that come from and belong to different organizations. The low communication power and possible data privacy breaches make the eigenspace estimation challenging. To address these issues, we propose a class of algorithms called FedPower within the federated learning (FL) framework. FedPower leverages the well-known power method by alternating multiple local power iterations and a global aggregation step, thus improving communication efficiency. In the aggregation, we propose to weight each local eigenvector matrix with Orthogonal Procrustes Transformation (OPT) for better alignment. We add Gaussian noise in each iteration to ensure strong privacy protection by adopting the notion of differential privacy (DP). We provide convergence bounds for FedPower composed of different interpretable terms corresponding to the effects of Gaussian noise, parallelization, and random sampling of local machines. Additionally, we conduct experiments to demonstrate the effectiveness of our proposed algorithms.


Author Profile
Xiao Guo

School of Mathematics Northwest University Xi’an China

China
Author Profile
Xiang Li

Department of Biostatistics Epidemiology and Informatics University of Pennsylvania Philadelphia USA

Andorra
Author Profile
Xiangyu Chang

School of Management Xi’an Jiaotong University Xi’an China

China

📄 논문 정보

발행 연도 2024년
인용수 0
출판 국가 Andorra, China
사이트 Springer
좋아요 수 0

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