The author aims to ensure strong privacy guarantees for Federated Learning under Data Reconstruction Attacks by constraining the transmitted information through innovative channel models and data space operations.
Constraining information leakage in Federated Learning against data reconstruction attacks is crucial for privacy protection.
Ensuring privacy in Federated Learning against data reconstruction attacks is achievable by constraining transmitted information through controlled parameter channels and data space operations.