Multiclass versus Binary Differentially Private PAC Learning Marco Gaboardi Department of Computer Science Department of Computer Science Boston University
–Neural Information Processing Systems
We show a generic reduction from multiclass differentially private PAC learning to binary private PAC learning. We apply this transformation to a recently proposed binary private PAC learner to obtain a private multiclass learner with sample complexity that has a polynomial dependence on the multiclass Littlestone dimension and a poly-logarithmic dependence on the number of classes. This yields a doubly exponential improvement in the dependence on both parameters over learners from previous work. Our proof extends the notion of Ψ-dimension defined in work of Ben-David et al. [5] to the online setting and explores its general properties.
Neural Information Processing Systems
Mar-21-2025, 14:49:39 GMT
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- Information Technology > Security & Privacy (0.46)
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