STRONG APPROXIMATIONS FOR EMPIRICAL PROCESSES INDEXED BY LIPSCHITZ FUNCTIONS

成果类型:
Article
署名作者:
Cattaneo, Matias D.; Yu, Ruiqi Rae
署名单位:
Princeton University
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/25-AOS2500
发表日期:
2025
页码:
1203-1229
关键词:
Gaussian Approximation asymptotics accuracy suprema sums
摘要:
This paper presents new uniform Gaussian strong approximations for empirical processes indexed by classes of functions based on d-variate random vectors (d >= 1). First, a uniform Gaussian strong approximation is established for general empirical processes indexed by possibly Lipschitz functions, improving on previous results in the literature. In the setting considered by Rio (Probab. Theory Related Fields 98 (1994) 21-45), and if the function class is Lipschitzian, our result improves the approximation rate n(-1/(2d)) to n(-1/max{d,2}), up to a polylog(n) term, where n denotes the sample size. Remarkably, we establish a valid uniform Gaussian strong approximation at the rate n(-1/2)logn for d=2, which was previously known to be valid only for univariate (d=1) empirical processes via the celebrated Hungarian construction (Komlos, Major and Tusn & aacute;dy, Z. Wahrsch. Verw. Gebiete 32 (1975) 111-131). Second, a uniform Gaussian strong approximation is established for multiplicative separable empirical processes indexed by possibly Lipschitz functions, which addresses some outstanding problems in the literature (Chernozhukov, Chetverikov and Kato, Ann. Statist. 42 (2014) 1564-1597, Section 3). Finally, two other uniform Gaussian strong approximation results are presented when the function class is a sequence of Haar basis based on quasi-uniform partitions. Applications to nonparametric density and regression estimation are discussed.