Improved Central Limit Theorem and bootstrap approximations in high dimensions

12/22/2019
by   Victor Chernozhukov, et al.
0

This paper deals with the Gaussian and bootstrap approximations to the distribution of the max statistic in high dimensions. This statistic takes the form of the maximum over components of the sum of independent random vectors and its distribution plays a key role in many high-dimensional econometric problems. Using a novel iterative randomized Lindeberg method, the paper derives new bounds for the distributional approximation errors. These new bounds substantially improve upon existing ones and simultaneously allow for a larger class of bootstrap methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/13/2020

Central Limit Theorem and Bootstrap Approximation in High Dimensions with Near 1/√(n) Rates

Non-asymptotic bounds for Gaussian and bootstrap approximation have rece...
research
12/17/2020

Nearly optimal central limit theorem and bootstrap approximations in high dimensions

In this paper, we derive new, nearly optimal bounds for the Gaussian app...
research
12/03/2017

Randomized incomplete U-statistics in high dimensions

This paper studies inference for the mean vector of a high-dimensional U...
research
09/08/2018

A high dimensional Central Limit Theorem for martingales, with applications to context tree models

We establish a central limit theorem for (a sequence of) multivariate ma...
research
08/26/2022

Quantitative limit theorems and bootstrap approximations for empirical spectral projectors

Given finite i.i.d. samples in a Hilbert space with zero mean and trace-...
research
03/02/2016

A Kernel Test for Three-Variable Interactions with Random Processes

We apply a wild bootstrap method to the Lancaster three-variable interac...

Please sign up or login with your details

Forgot password? Click here to reset