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Nonparametric Models For Longitudinal Data With Implementation In R Tian

  • SKU: BELL-7162564
Nonparametric Models For Longitudinal Data With Implementation In R Tian
$ 31.00 $ 45.00 (-31%)

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Nonparametric Models For Longitudinal Data With Implementation In R Tian instant download after payment.

Publisher: CRC Press
File Extension: PDF
File size: 4.78 MB
Author: Tian, Xin; Wu, Colin O.
ISBN: 9780429939075, 9780429939082, 9781466516014, 0429939078, 0429939086, 1466516011
Language: English
Year: 2018

Product desciption

Nonparametric Models For Longitudinal Data With Implementation In R Tian by Tian, Xin; Wu, Colin O. 9780429939075, 9780429939082, 9781466516014, 0429939078, 0429939086, 1466516011 instant download after payment.

"This book covers the recent advancement of statistical methods for the analysis of longitudinal data. Real datasets from four large NIH-supported longitudinal clinical trials and epidemiological studies illustrate the practical applications of the statistical methods. This book focuses on the nonparametric approaches, which have gained tremendous popularity in biomedical studies. These approaches have the flexibility to answer many scientific questions that cannot be properly addressed by the existing parametric approaches, such as the linear and nonlinear mixed effects models."--Provided by publisher. 

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