Researchers have formalized generalization error bounds using Rademacher complexity in the Lean 4 proof assistant. This work builds upon measure-theoretic probability theory within the Mathlib library. The formalization includes a mechanically-checked pipeline from definitions to high-probability uniform deviation bounds via a proved McDiarmid inequality, with applications to linear predictors and Dudley-type entropy integral bounds. AI
IMPACT Provides a mechanically-verified foundation for understanding machine learning model generalization, potentially improving trust and reliability in theoretical guarantees.
RANK_REASON This is a formalization of a theoretical concept in machine learning published on arXiv. [lever_c_demoted from research: ic=1 ai=1.0]
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