Applications of Measure Theory to Statistics

This book PDF is perfect for those who love Mathematics genre, written by Gogi Pantsulaia and published by Springer which was released on 22 December 2016 with total hardcover pages 134. You could read this book directly on your devices with pdf, epub and kindle format, check detail and related Applications of Measure Theory to Statistics books below.

Applications of Measure Theory to Statistics
Author : Gogi Pantsulaia
File Size : 44,8 Mb
Publisher : Springer
Language : English
Release Date : 22 December 2016
ISBN : 9783319455785
Pages : 134 pages
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Applications of Measure Theory to Statistics by Gogi Pantsulaia Book PDF Summary

This book aims to put strong reasonable mathematical senses in notions of objectivity and subjectivity for consistent estimations in a Polish group by using the concept of Haar null sets in the corresponding group. This new approach – naturally dividing the class of all consistent estimates of an unknown parameter in a Polish group into disjoint classes of subjective and objective estimates – helps the reader to clarify some conjectures arising in the criticism of null hypothesis significance testing. The book also acquaints readers with the theory of infinite-dimensional Monte Carlo integration recently developed for estimation of the value of infinite-dimensional Riemann integrals over infinite-dimensional rectangles. The book is addressed both to graduate students and to researchers active in the fields of analysis, measure theory, and mathematical statistics.

Applications of Measure Theory to Statistics

This book aims to put strong reasonable mathematical senses in notions of objectivity and subjectivity for consistent estimations in a Polish group by using the concept of Haar null sets in the corresponding group. This new approach – naturally dividing the class of all consistent estimates of an unknown parameter in

Get Book
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