Lotto addresses the issue of secure participant selection in Federated Learning to prevent adversarial servers from manipulating client selection. It introduces random and informed selection algorithms, ensuring fairness and security. By incorporating verifiable randomness and population refinement, Lotto aligns the proportion of compromised participants with the base rate of dishonest clients. The protocol guarantees consistency and security throughout the training process, maintaining privacy while maximizing utility.
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