28. Oct 2025
TCS Seminar – Unified Privacy Guarantees for Decentralized Learning via Matrix Factorization
Datum: 28. October 2025 |
10:45 –
12:00
Sprecher:
Edwige Cyffers, ISTA
Veranstaltungsort: Central Bldg / O1 / Mondi 2a (I01.O1.008)
Sprache:
Englisch
Yet in practice, the observed privacy-utility trade-off often appears worse than in centralized training, which may be due to limitations in current DP accounting methods for DL. In this paper, we show that recent advances in centralized DP accounting based on Matrix Factorization (MF) for analyzing temporal noise correlations can also be leveraged in DL. By generalizing existing MF results, we show how to cast both standard DL algorithms and common trust models into a unified formulation. This yields tighter privacy accounting for existing DP-DL algorithms and provides a principled way to develop new ones. To demonstrate the approach, we introduce MAFALDA-SGD, a gossip-based DL algorithm with user-level correlated noise that outperforms existing methods on synthetic and real-world graphs.