NeurIPS2021
Concentration inequalities under sub-Gaussian and sub-exponential conditions
Andreas Maurer, Massimiliano Pontil
被引用 36 次
摘要
We prove analogues of the popular bounded difference inequality (also called McDiarmid's inequality) for functions of independent random variables under sub-Gaussian and sub-exponential conditions. Applied to vector-valued concentration and the method of Rademacher complexities these inequalities allow an easy extension of uniform convergence results for PCA and linear regression to the case of potentially unbounded input-and output variables.