Instance-optimality in differential privacy via approximate inverse sensitivity mechanisms
–Neural Information Processing Systems
We study and provide instance-optimal algorithms in differential privacy by extending and approximating the inverse sensitivity mechanism. We provide two approximation frameworks, one which only requires knowledge of local sensitivities, and a gradient-based approximation for optimization problems, which are efficiently computable for a broad class of functions. We complement our analysis with instance-specific lower bounds for vector-valued functions, which demonstrate that our mechanisms are (nearly) instance-optimal under certain assumptions and that minimax lower bounds may not provide an accurate estimate of the hardness of a problem in general: our algorithms can significantly outperform minimax bounds for well behaved instances. Finally, we use our approximation framework to develop private mechanisms for unbounded-range mean estimation, principal component analysis, and linear regression. For PCA, our mechanisms give an efficient (pure) differentially private algorithm with near-optimal rates.
Neural Information Processing Systems
May-30-2025, 23:24:12 GMT
- Country:
- North America > Canada > Alberta (0.14)
- Genre:
- Research Report (0.46)
- Industry:
- Information Technology > Security & Privacy (1.00)
- Technology: