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📄 ResearchMay 13, 2026
Scale-Sensitive Shattering: Learnability and Evaluability at Optimal Scale
We study the optimal scale at which real-valued function classes exhibit uniform convergence and learnability. Our main result establishes a scale-sensitive generalization of the fundamental theorem of PAC learning: for every bounded real-valued class and every $γ>0$, uniform convergence at scale $γ...
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