Large-dimensional Central Limit Theorem with Fourth-moment Error Bounds on Convex Sets and Balls

09/01/2020
by   Xiao Fang, et al.
0

We prove the large-dimensional Gaussian approximation of a sum of n independent random vectors in ℝ^d together with fourth-moment error bounds on convex sets and Euclidean balls. We show that compared with classical third-moment bounds, our bounds can achieve improved and, in the case of balls, optimal dependence d=o(n) on dimension. We discuss an application to the bootstrap. The proof is by recent advances in Stein's method.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset