The content introduces SPriFed-OMP, a new algorithm for sparse basis recovery in Federated Learning. It combines OMP with SMPC and DP to achieve differential privacy while efficiently recovering true sparse models under high-dimensional settings. The algorithm significantly outperforms existing solutions in terms of accuracy-privacy trade-offs.
Key points include the challenges of traditional DP algorithms failing to recover accurate sparse models when p " n, the development of SPriFed-OMP to address these challenges by adding noise efficiently, and the enhancements made to improve performance through gradient privatization. The theoretical analysis and empirical results demonstrate the effectiveness of SPriFed-OMP in achieving accurate sparse recovery under high-dimensional settings.
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arxiv.org
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