Empirical process techniques for independent data have been used for many years in statistics and probability theory. These techniques have proved very useful for studying asymptotic properties of parametric as well as non-parametric statistical procedures. Recently, the need to model the dependence structure in data sets from many different subject areas such as finance, insurance, and telecommunications has led to new developments concerning the empirical distribution function and the empirical process for dependent, mostly stationary sequences. This work gives an introduction to this new theory of empirical process techniques, which has so far been scattered in the statistical and probabilistic literature, and surveys the most recent developments in various related fields. Key features: A thorough and comprehensive introduction to the existing theory of empirical process techniques for dependent data * Accessible surveys by leading experts of the most recent developments in various related fields * Examines empirical process techniques for dependent data, useful for studying parametric and non-parametric statistical procedures * Comprehensive bibliographies * An overview of applications in various fields related to empirical processes: e.g., spectral analysis of time-series, the bootstrap for stationary sequences, extreme value theory, and the empirical process for mixing dependent observations, including the case of strong dependence. To date this book is the only comprehensive treatment of the topic in book literature. It is an ideal introductory text that will serve as a reference or resource for classroom use in the areas of statistics, time-series analysis, extreme value theory, point process theory, and applied probability theory. Contributors: P. Ango Nze, M.A. Arcones, I. Berkes, R. Dahlhaus, J. Dedecker, H.G. Dehling,
It is not hard to verify (see Exercise 22.6.14) that the class (22.32) %to = {–(3–60)'Z: 3 e B} satisfies (22.33) N(0, Ho, L2(P)) < k,.6 ". for all 6 - 0 and some constant k, 4 oo (which may depend on P). Fix P that satisfies the ...
On moment conditions for normed sums of independent variables and martingale differences . ... An introduction to probability theory and its applications . Vol . ... On the functional central limit theorem via martingale approximation .
30, 397–430 (2002) Nze, P.A., Doukhan, P.:Weak dependence: models and applications. In: Dehling, H., Mikosch, T., Sørensen, M. (eds.) Empirical Process Techniques for Dependent Data, pp. 117–136. Birkhäuser, Boston (2002) Radulovic, ...
Das, K., Jiang, J., and Rao, J. N. K. (2004), Mean squared error of empirical predictor, Ann. Statist. ... Dehling, H., Mikosch, T., and sorensen, M. (2002), Empirical Process Techniques for Dependent Data, Birkhauser, Boston.
Andrews DWK (1994) Empirical process method in econometrics. In: Engle RF, McFadden DL (ed) The Handbook of ... J Economet 72:1–32 Dehling H, Philipp W., 2002, Empirical process techniques for dependent data. In: Dehling H, Mikosch T, ...
Empirical Process Techniques for Dependent Data . Birkhäuser , Boston . [ 5 ] EINMAHL , U. AND MASON , D. M. ( 2000 ) . An empirical process approach to the uniform consistency of kernel - type function estimators . J. Theoret .
Dependence in probability and statistics. ... A note on weak convergence of the sequential multivariate empirical process under strong mixing. J. Theoret. Probab. 28, no. ... New techniques for empirical processes of dependent data.
M. Falk, J. Hiisler, and R.-D. Reiss: Laws of Small Numbers: Extremes and Rare Events. Birkhauser, Basel (1994). W. Feller: An Introduction to Probability Theory and Its Applications. Vol.1, 3rd edition, John Wiley & Sons, ...
This is a self-contained introduction to parametric modeling, exploratory analysis and statistical interference for extreme values, as used in disciplines from hydrology to finance to environmental science.
[99] Götze, F., Hipp, C. (1978) Asymptotic expansions in the central limit theorem under moment conditions. Z. Wahr. und Verw. Gebiete 42-1, 67-87. [100] Hall, P., Heyde, C. C. (1980) Martingale limit theory and its applications.