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1974, Volume 43
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General information
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Contents
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Statistical estimation theory. Part I
Foreword of the editor
A. M. Kagan
5
Similar zones in the problem of compar in the location parameters of two exponential distributions with unknown variances
Yu. V. Borovskikh
6–14
Sample mean as an estimator of the location parameter in case of the Laplacian loss function, in presence of the nuisance scale parameter
A. A. Zinger, A. M. Kagan
15–29
Asymptotic behaviour of the polynomial Pitman estimators
A. M. Kagan, L. B. Klebanov, S. M. Fintushal
30–39
Unbiased estimators and convex loss functions
L. B. Klebanov
40–52
On characterization of the normal and Gamma distributions by properties of Fisher information
L. B. Klebanov, I. A. Melamed
53–58
Strongly symmetric families and statistical analysis of their parameters
A. L. Rukhin
59–87
On asymptotic optimality of the binomial fixed size sample plans within the class of plans with bounded sample wize mean value
P. N. Sapozhnikov
88–93
Effective sequential estimation for the exponential families of rank I
D. D. Scrjabin
94–106
Exact distributions of certain goodness of fit criteria and their complete asymptotic expansions
Yu. V. Borovskikh
107–132
Complete asymptotic expansions of distributions of nonparametric criteria based on random size samples
Yu. V. Borovskikh
133–154
Unbiased estimators of the Neumann series by Monte-Carlo method
S. M. Ermakov, P. G. Skvortzov
155–168
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