Nonparametric Goodness-of-Fit Testing Under Gaussian Models von Yuri Ingster | ISBN 9780387955315

Nonparametric Goodness-of-Fit Testing Under Gaussian Models

von Yuri Ingster und I.A. Suslina
Mitwirkende
Autor / AutorinYuri Ingster
Autor / AutorinI.A. Suslina
Buchcover Nonparametric Goodness-of-Fit Testing Under Gaussian Models | Yuri Ingster | EAN 9780387955315 | ISBN 0-387-95531-3 | ISBN 978-0-387-95531-5

From the reviews:

„The book is self-contained, and the bibliography is very rich and in fact provides a comprehensive listing of references about minimax testing (something that heretofore had been missing from the field.) To get the best out of this book, the reader should be familiar with basic functional analysis, wavelet theory, and optimization for extreme problems…It is highly recommended to anyone who wants an introduction to hypothesis testing from the minimax approach–yet it is only a starting point, as Gaussian models are studied exclusively.“ Journal of the American Statistical Association, June 2004

„The book deals with nonparametric goodness-of-fit testing problems from the literature of the past twenty years. … It is a theoretical book with mathematical results … . The proofs of the theorems are very detailed and many details are in the appendix of more than one hundred pages.“ (N. D. C. Veraverbeke, Short Book Reviews, Vol. 24 (1), 2004)

„The present book is devoted to a modern theory of nonparametric goodness-of-fit testing. … The level of the book meets a quite high standard. The book will certainly be of interest to mathematical statisticians interested in the theory of nonparametric statistical interference, and also to specialists dealing with applied nonparametric statistical problems in signal detection and transmission, technical and medical diagnostics, and other fields.“ (Marie Huškova, Zentralblatt MATH, Vol. 1013, 2003)

Nonparametric Goodness-of-Fit Testing Under Gaussian Models

von Yuri Ingster und I.A. Suslina
Mitwirkende
Autor / AutorinYuri Ingster
Autor / AutorinI.A. Suslina
This monograph will be of interest to researchers working in the area of nonparametric statistics.