A Parametric Approach to Nonparametric Statistics A Parametric Approach to Nonparametric Statistics
Springer Series in the Data Sciences

A Parametric Approach to Nonparametric Statistics

    • 39,99 $US
    • 39,99 $US

Description de l’éditeur

This book demonstrates that nonparametric statistics can be taught from a parametric point of view. As a result, one can exploit various parametric tools such as the use of the likelihood function, penalized likelihood and score functions to not only derive well-known tests but to also go beyond and make use of Bayesian methods to analyze ranking data. The book bridges the gap between parametric and nonparametric statistics and presents the best practices of the former while enjoying the robustness properties of the latter.

This book can be used in a graduate course in nonparametrics, with parts being accessible to senior undergraduates.  In addition, the book will be of wide interest to statisticians and researchers in applied fields.

GENRE
Science et nature
SORTIE
2018
12 octobre
LANGUE
EN
Anglais
LONGUEUR
293
Pages
ÉDITIONS
Springer International Publishing
VENDEUR
Springer Nature B.V.
TAILLE
15,9
Mo
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