A differentially private fine-tuning method that constructs a quadratic utility function to allow exact sampling from a multivariate normal distribution while providing theoretical privacy guarantees.
Her research interests include federated learning, differential privacy, synthetic data generation, and distributed optimization
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An exponential mechanism based on quadratic approximations for fine-tuning machine learning models with privacy guarantees
A differentially private fine-tuning method that constructs a quadratic utility function to allow exact sampling from a multivariate normal distribution while providing theoretical privacy guarantees.