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Simultaneous Inference In Regression Wei Liu

  • SKU: BELL-2045522
Simultaneous Inference In Regression Wei Liu
$ 31.00 $ 45.00 (-31%)

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Simultaneous Inference In Regression Wei Liu instant download after payment.

Publisher: CRC
File Extension: PDF
File size: 3.97 MB
Pages: 292
Author: Wei Liu
ISBN: 9781439828090, 1439828091
Language: English
Year: 2011

Product desciption

Simultaneous Inference In Regression Wei Liu by Wei Liu 9781439828090, 1439828091 instant download after payment.

Simultaneous confidence bands enable more intuitive and detailed inference of regression analysis than the standard inferential methods of parameter estimation and hypothesis testing. Simultaneous Inference in Regression provides a thorough overview of the construction methods and applications of simultaneous confidence bands for various inferential purposes. It supplies examples and MATLAB® programs that make it easy to apply the methods to your own data analysis. The MATLAB programs, along with color figures, are available for download on www.personal.soton.ac.uk/wl/mybook.html Most of the book focuses on normal-error linear regression models. The author presents simultaneous confidence bands for a simple regression line, a multiple linear regression model, and polynomial regression models. He also uses simultaneous confidence bands to assess part of a multiple linear regression model with the zero function, to compare two regression models, and to evaluate more than two regression models. The final chapter demonstrates the use of simultaneous confidence bands in generalized linear regression models, such as logistic regression models. This book shows how to employ simultaneous confidence bands to make useful inferences in regression analysis. The topics discussed can be extended to functions other than parametric regression functions, offering novel opportunities for research beyond linear regression models.

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