U-statistics in Banach spaces
Author(s)
Bibliographic Information
U-statistics in Banach spaces
VSP, 1996
Available at / 7 libraries
-
No Libraries matched.
- Remove all filters.
Note
Includes bibliographical reference (p. 385-417) and index
Description and Table of Contents
Description
01/07 This title is now available from Walter de Gruyter. Please see www.degruyter.com for more information.
U-statistics are universal objects of modern probabilistic summation theory. They appear in various statistical problems and have very important applications. The mathematical nature of this class of random variables has a functional character and, therefore, leads to the investigation of probabilistic distributions in infinite-dimensional spaces. The situation when the kernel of a U-statistic takes values in a Banach space, turns out to be the most natural and interesting.
In this book, the author presents in a systematic form the probabilistic theory of U-statistics with values in Banach spaces (UB-statistics), which has been developed to date. The exposition of the material in this book is based around the following topics:
algebraic and martingale properties of U-statistics; inequalities; law of large numbers; the central limit theorem; weak convergence to a Gaussian chaos and multiple stochastic integrals; invariance principle and functional limit theorems; estimates of the rate of weak convergence; asymptotic expansion of distributions; large deviations; law of iterated logarithm; dependent variables; relation between Banach-valued U-statistics and functionals from permanent random measures.
Table of Contents
Preface
Introduction
1. BASIC DEFINITIONS
One sample UB-statistics
Multisample UB-statistics
Von Mises' statistics
Banach-valued symmetric statistics
Permanent symmetric statistics
Multiple stochastic integrals
B-valued polynomial chaos
2. INEQUALITIES
Inequalities based on the Hoeffding formula
Martingale moment inequalities
Maximal inequalities
Contraction and symmetrization inequalities
Decoupling inequalities
Hypercontractive method in moment inequalities
Moment inequalities in Banach spaces of type p
3. LAW OF LARGE NUMBERS
One-sample UB-statistics
Multi-sample UB-statistics
Von Mises' statistics
Estimates of convergence rates
4. WEAK CONVERGENCE
Central limit theorem
Convergence to a chaos
Multi-sample UB-statistics
Poisson approximation
Stable approximation
Approximation with increasing degrees
Symmetric statistics
U-statistics with varying kernels
Weighted U-statistics
5. FUNCTIONAL LIMIT THEOREMS
Non-degenerate kernels
Degenerate kernels
Weak convergence to a chaos process
Weak convergence in the Poisson approximation scheme
Invariance principle for symmetric statistics
Functional limit theorems with varying kernels
Weak convergence of U-processes
6. APPROXIMATION ESTIMATES
General methods of estimation
Rate of normal approximation of UR-statistics
Estimates with increasing degree
Nonuniform estimates
Rate of chaos approximation
Normal approximation of UH-statistics
Multi-sample UH-statistics
Estimates in central limit theorem
Rate of Poisson approximation
7. ASYMPTOTIC EXPANSIONS
Expansions for non-degenerate UR-statistics
General method of expansions
Expansions with canonical kernels
Expansions with arbitrary kernels
8. LARGE DEVIATIONS
Exponential inequalities
Moderate deviations
Power zones of normal convergence
Probabilities of large deviations for UH-statistics
9. LAW OF ITERATED LOGARITHM
UR-statistics
UH-statistics
Bounded LIL
Compact LIL
Functional LIL
Multisample UB-statistics
10. DEPENDENT VARIABLES
Symmetrically dependent random variables
Weakly dependent random variables
Bootstrap variables
Order statistics
Bibliographical supplements and comments
Bibliography
Index
by "Nielsen BookData"