Pivotal Measures In Statistical Experiments And Sufficiency


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Pivotal Measures in Statistical Experiments and Sufficiency


Pivotal Measures in Statistical Experiments and Sufficiency

Author: Sakutaro Yamada

language: en

Publisher: Springer Science & Business Media

Release Date: 2012-12-06


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In the present work I want to show a mathematical study of the statistical notion of sufficiency mainly for undominated statistical experiments. The famous Burkholder's (1961) and Pitcher's(1957) examples motivated some researchers to develop new theory of sufficiency. Le Cam (1964) is probably the most excellent paper in this field of study. This note also belongs to the same area. Though it is more restrictive than Le Cam's paper(1964), a study which is connected more directly with the classical papers of Halmos and Savage(1949) , and Bahadur(1954) is shown. Namely I want to develop a study based on the notion of pivotal measure which was introduced by Halmos and Savage(1949) . It is great pleasure to have this opportunity to thank Professor H. Heyer and Professor H. Morimoto for their careful reading the manuscript and valuable comments on it. I am also thankful to Professor H. Luschgy and Professor D. Mussmann for thei r proposal of wr i ting "the note". I would like to dedicate this note to the memory of my father Eizo.

Pivotal Measures in Statistical Experiments and Sufficiency


Pivotal Measures in Statistical Experiments and Sufficiency

Author: Sakutaro Yamada

language: en

Publisher:

Release Date: 1994-03-11


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Nonparametric Statistics for Stochastic Processes


Nonparametric Statistics for Stochastic Processes

Author: Denis Bosq

language: en

Publisher: Springer Science & Business Media

Release Date: 2012-12-06


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This book provides a mathematically rigorous treatment of the theory of nonparametric estimation and prediction for stochastic processes. It discusses discrete time and continuous time, and the emphasis is on the kernel methods. Several new results are presented concerning optimal and superoptimal convergence rates. How to implement the method is discussed in detail and several numerical results are presented. This book will be of interest to specialists in mathematical statistics and to those who wish to apply these methods to practical problems involving time series analysis.