March 21, 2024, noon | Joseph Near, David Darais

Cybersecurity Insights www.nist.gov

In our second post we described attacks on models and the concepts of input privacy and output privacy . ln our last post , we described horizontal and vertical partitioning of data in privacy-preserving federated learning (PPFL) systems. In this post, we explore the problem of providing input privacy in PPFL systems for the horizontally-partitioned setting. Models, training, and aggregation To explore techniques for input privacy in PPFL, we first have to be more precise about the training process. In …

attacks concepts data federated federated learning input privacy problem protecting systems updates

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