Nonparametric Statistical Methods For Complete and Censored Data

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A01=D. Raghavarao
A01=M.M. Desu
advanced nonparametric inference applications
approxim
ates
ation
Author_D. Raghavarao
Author_M.M. Desu
block design experiments
Block Ranks
Category=PBT
Category=PS
censored data techniques
clinical trial analysis
D A Ta
Da Ta
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eq_nobargain
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estim
Estim Ate
Estim Ator
hypothesis
istribu
Istribu Tion
Lehm Ann
Logrank Scores
Logrank Test
NPAR1WAY Procedure
Param Eter
Proc Print
Proc Print Data
quan
Random Ization Tests
rank-based statistics
RCB Design
SAS statistical programming
Sim Ilar
Sta Tistic
survival analysis methods
Ta Tis Tic
Test Sta Tistic
Tests Ta
tion
Tis Tic
tity
Walsh Averages
Wilcoxon Signed Rank Test
WMW Test

Product details

  • ISBN 9780367394950
  • Weight: 530g
  • Dimensions: 156 x 234mm
  • Publication Date: 05 Sep 2019
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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Balancing the "cookbook" approach of some texts with the more mathematical approach of others, Nonparametric Statistical Methods for Complete and Censored Data introduces commonly used non-parametric methods for complete data and extends those methods to right censored data analysis. Whenever possible, the authors derive their methodology from the general theory of statistical inference and introduce the concepts intuitively for students with minimal backgrounds. Derivations and mathematical details are relegated to appendices at the end of each chapter, which allows students to easily proceed through each chapter without becoming bogged down in a lot of mathematics.

In addition to the nonparametric methods for analyzing complete and censored data, the book covers optimal linear rank statistics, clinical equivalence, analysis of block designs, and precedence tests. To make the material more accessible and practical, the authors use SAS programs to illustrate the various methods included.

Exercises in each chapter, SAS code, and a clear, accessible presentation make this an outstanding text for a one-semester senior or graduate-level course in nonparametric statistics for students in a variety of disciplines, from statistics and biostatistics to business, psychology, and the social scientists.

Prerequisites: Students will need a solid background in calculus and a two-semester course in mathematical statistics.

Desu, M.M.; Raghavarao, D.

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