DP-HyPO: An Adaptive Private Hyperparameter Optimization Framework
–Neural Information Processing Systems
In contrast, in non-private settings, practitioners commonly utilize "adaptive" hyperparameter optimization methods such as Gaussian process-based optimization, which select the next candidate based on information gathered from previous outputs. This substantial contrast between private and non-private hyperparameter optimization underscores a critical concern. In our paper, we introduce DP-HyPO, a pioneering framework for "adaptive"
Neural Information Processing Systems
Feb-15-2026, 14:24:03 GMT
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