Toward the History of the St. Petersburg School of Probability and Statistics. IV. Characterization of Distributions and Limit Theorems in Statistics


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Abstract

This is the fourth article in a series of surveys devoted to the scientific achievements of the Leningrad—St. Petersburg School of Probability and Statistics from 1947 to 2017. It is devoted to studies on the characterization of distributions, limit theorems for kernel density estimators, and asymptotic efficiency of statistical tests. The characterization results are related to the independence and equidistribution of linear forms of sample values, as well as to regression relations, admissibility, and optimality of statistical estimators. When calculating the Bahadur asymptotic efficiency, particular attention is paid to the logarithmic asymptotics of large deviation probabilities of test statistics under the null hypothesis. Constructing new goodness-of-fit and symmetry tests based on characterizations is considered, and their asymptotic behavior is analyzed. Conditions of local asymptotic optimality of various nonparametric statistical tests are studied.

About the authors

A. Yu. Zaitsev

St. Petersburg State University; St. Petersburg Department, Steklov Mathematical Institute

Author for correspondence.
Email: zaitsev@pdmi.ras.ru
Russian Federation, St. Petersburg, 199034; St. Petersburg, 191023

A. M. Kagan

University of Maryland

Author for correspondence.
Email: amk@math.umd.edu
United States, College Park, Maryland, 20742

Ya. Yu. Nikitin

St. Petersburg State University

Author for correspondence.
Email: y.nikitin@spbu.ru
Russian Federation, St. Petersburg, 199034

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