Title of article :
Functional Central Limit Theorems for Triangular Arrays of Function-Indexed Processes under Uniformly Integrable Entropy Conditions
Author/Authors :
Ziegler، نويسنده , , Klaus، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 1997
Pages :
40
From page :
233
To page :
272
Abstract :
Functional central limit theorems for triangular arrays of rowwise independent stochastic processes are established by a method replacing tail probabilities by expectations throughout. The main tool is a maximal inequality based on a preliminary version proved by P. Gaenssler and Th. Schlumprecht. Its essential refinement used here is achieved by an additional inequality due to M. Ledoux and M. Talagrand. The entropy condition emerging in our theorems was introduced by K. S. Alexander, whose functional central limit theorem for so-calledmeasure-like processeswill be also regained. Applications concern, in particular, so-calledrandom measure processeswhich include function-indexed empirical processes and partial-sum processes (with random or fixed locations). In this context, we obtain generalizations of results due to K. S. Alexander, M. A. Arcones, P. Gaenssler, and K. Ziegler. Further examples include nonparametric regression and intensity estimation for spatial Poisson processes.
Keywords :
smoothing by convolution , Nonparametric regression , Intensity estimation , Functional central limit theorem , Symmetrization , Metric entropy , VC graph class , Maximal inequality , empirical processes , partial sum processes , random measure processes , Sequential empirical process , asymptotic equicontinuity
Journal title :
Journal of Multivariate Analysis
Serial Year :
1997
Journal title :
Journal of Multivariate Analysis
Record number :
1557458
Link To Document :
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