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Probability Theory and Extreme Value Theory Reprint 2011 [Kõva köide]

  • Formaat: Hardback, 754 pages, kõrgus x laius: 230x155 mm, kaal: 1721 g
  • Ilmumisaeg: 02-Dec-2003
  • Kirjastus: VSP International Science Publishers
  • ISBN-10: 9067643858
  • ISBN-13: 9789067643856
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    • De Gruyter e-raamatud
  • Formaat: Hardback, 754 pages, kõrgus x laius: 230x155 mm, kaal: 1721 g
  • Ilmumisaeg: 02-Dec-2003
  • Kirjastus: VSP International Science Publishers
  • ISBN-10: 9067643858
  • ISBN-13: 9789067643856
Teised raamatud teemal:
01/07 This title is now available from Walter de Gruyter. Please see www.degruyter.com for more information.

Professor Puri is one of the most versatile and prolific researchers in the world in mathematical statistics. His research areas include nonparametric statistics, order statistics, limit theory under mixing, time series, splines, tests of normality, generalized inverses of matrices and related topics, stochastic processes, statistics of directional data, random sets, and fuzzy sets and fuzzy measures. His fundamental contributions in developing new rank-based methods and precise evaluation of the standard procedures, asymptotic expansions of distributions of rank statistics, as well as large deviation results concerning them, span such areas as analysis of variance, analysis of covariance, multivariate analysis, and time series, to mention a few. His in-depth analysis has resulted in pioneering research contributions to prominent journals that have substantial impact on current research. This book together with the other two volumes (Volume 1: Nonparametric Methods in Statistics and Related Topics; Volume 3: Time Series, Fuzzy Analysis and Miscellaneous Topics), are a concerted effort to make his research works easily available to the research community. The sheer volume of the research output by him and his collaborators, coupled with the broad spectrum of the subject matters investigated, and the great number of outlets where the papers were published, attach special significance in making these works easily accessible. The papers selected for inclusion in this work have been classified into three volumes each consisting of several parts. All three volumes carry a final part consisting of the contents of the other two, as well as the complete list of Professor Puris publications.
Preface
Part I. LIMIT THEOREMS, RATES OF CONVERGENCE, AND RELATED TOPICS (INDEPENDENT
CASE)
Order of normal approximation for rank test statistics distribution
Convergence and remainder terms in linear rank statistics
Invariance principles for rank statistics for testing independence
On the degeneration of the variance in the asymptotic normality of signed
rank statistics
On the order of magnitude of cumulants of von Mises functionals and related
statistics
On BerryEsséen rates, a law of the iterated logarithm and an invariance
principle for the proportion of the sample below the sample mean
Cramér type large deviations for generalized rank statistics
On the rate of convergence in the central limit theorem for signed rank
statistics
A sharpening of the remainder term in the higher-dimensional central limit
theorem for multilinear rank statistics
The order of normal approximation for signed linear rank statistics
Central limit theorem for perturbed empirical distribution functions
evaluated at a random point
Limit theorems for random central order statistics
Asymptotic expansions for sums of nonidentically distributed Bernoulli random
variables
On the rate of convergence in normal approximation and large deviation
probabilities for a class of statistics
On Hilbert-space-valued U-statistics
On the central limit theorem in Hilbert space with application to
U-statistics
Asymptotic expansions in statistics: A review of methods and applications
Normal approximation of U-statistics in Hilbert space
Part II. LIMIT THEOREMS (DEPENDENT CASE)
Empirical distribution functions and functions of order statistics for mixing
random variables
An invariance principle for processes indexed by two parameters and some
statistical applications
Limiting behavior of U-statistics, V -statistics, and one sample rank order
statistics for nonstationary absolutely regular processes
Weak invariance of generalized U-statistics for nonstationary absolutely
regular processes
The space Dk and weak convergence for the rectangle-indexed processes under
mixing
Weak invariance of the multidimensional rank statistic for nonstationary
absolutely regular processe
Weak convergence of the simple linear rank statistic under mixing conditions
in the nonstationary case
Weak convergence of weighted empirical U-statistics processes for dependent
random variables
Law of the iterated logarithm for perturbed empirical distribution functions
evaluated at a random point for nonstationary random variables
Valid Edgeworth expansions of M-estimators in regression models with weakly
dependent residuals
Conditional U-statistics for dependent random variables
Weak convergence of sequences of first passage processes and applications
Conditional empirical processes defined by nonstationary
absolutely regular sequences
Part III. EXTREME VALUE THEORY
A strong invariance principle concerning the J -upper order statistics for
stationary m-dependent sequences
A strong invariance principle concerning the J -upper order statistics for
stationary Gaussian sequences
Extremes of Markov sequences
Records and 2-block records of 1-dependent stationary sequences under local
dependence