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Federated Learning Meets Fairness and Differential Privacy (2108.09932v1)

Published 23 Aug 2021 in cs.LG, cs.AI, cs.CR, and cs.CY

Abstract: Deep learning's unprecedented success raises several ethical concerns ranging from biased predictions to data privacy. Researchers tackle these issues by introducing fairness metrics, or federated learning, or differential privacy. A first, this work presents an ethical federated learning model, incorporating all three measures simultaneously. Experiments on the Adult, Bank and Dutch datasets highlight the resulting ``empirical interplay" between accuracy, fairness, and privacy.

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Authors (3)
  1. Manisha Padala (11 papers)
  2. Sankarshan Damle (16 papers)
  3. Sujit Gujar (64 papers)
Citations (18)

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