Nonlinear Regression with R
Title | Nonlinear Regression with R PDF eBook |
Author | Christian Ritz |
Publisher | Springer Science & Business Media |
Pages | 151 |
Release | 2008-12-11 |
Genre | Mathematics |
ISBN | 0387096167 |
- Coherent and unified treatment of nonlinear regression with R. - Example-based approach. - Wide area of application.
Statistical Tools for Nonlinear Regression
Title | Statistical Tools for Nonlinear Regression PDF eBook |
Author | Sylvie Huet |
Publisher | Springer Science & Business Media |
Pages | 161 |
Release | 2013-04-17 |
Genre | Mathematics |
ISBN | 147572523X |
Statistical Tools for Nonlinear Regression presents methods for analyzing data. It has been expanded to include binomial, multinomial and Poisson non-linear models. The examples are analyzed with the free software nls2 updated to deal with the new models included in the second edition. The nls2 package is implemented in S-PLUS and R. Several additional tools are included in the package for calculating confidence regions for functions of parameters or calibration intervals, using classical methodology or bootstrap.
Robust Nonlinear Regression
Title | Robust Nonlinear Regression PDF eBook |
Author | Hossein Riazoshams |
Publisher | John Wiley & Sons |
Pages | 258 |
Release | 2018-08-20 |
Genre | Mathematics |
ISBN | 1118738063 |
The first book to discuss robust aspects of nonlinear regression—with applications using R software Robust Nonlinear Regression: with Applications using R covers a variety of theories and applications of nonlinear robust regression. It discusses both parts of the classic and robust aspects of nonlinear regression and focuses on outlier effects. It develops new methods in robust nonlinear regression and implements a set of objects and functions in S-language under SPLUS and R software. The software covers a wide range of robust nonlinear fitting and inferences, and is designed to provide facilities for computer users to define their own nonlinear models as an object, and fit models using classic and robust methods as well as detect outliers. The implemented objects and functions can be applied by practitioners as well as researchers. The book offers comprehensive coverage of the subject in 9 chapters: Theories of Nonlinear Regression and Inference; Introduction to R; Optimization; Theories of Robust Nonlinear Methods; Robust and Classical Nonlinear Regression with Autocorrelated and Heteroscedastic errors; Outlier Detection; R Packages in Nonlinear Regression; A New R Package in Robust Nonlinear Regression; and Object Sets. The first comprehensive coverage of this field covers a variety of both theoretical and applied topics surrounding robust nonlinear regression Addresses some commonly mishandled aspects of modeling R packages for both classical and robust nonlinear regression are presented in detail in the book and on an accompanying website Robust Nonlinear Regression: with Applications using R is an ideal text for statisticians, biostatisticians, and statistical consultants, as well as advanced level students of statistics.
Nonlinear Statistical Models
Title | Nonlinear Statistical Models PDF eBook |
Author | A. Ronald Gallant |
Publisher | John Wiley & Sons |
Pages | 632 |
Release | 1987-02-04 |
Genre | Mathematics |
ISBN |
Univariate nonlinear regression; Univariate nonlinear regression: special situations; A unified asymptotic theory of nonlinear models with regression structure; Univariate nonlinear regression: asymptotic theory; Multivariate nonlinear regression; Nonlinear simultaneus equations models; A unified asymptotic theory for dynamic nonlinear models.
Nonlinear Regression Analysis and Its Applications
Title | Nonlinear Regression Analysis and Its Applications PDF eBook |
Author | Douglas M. Bates |
Publisher | Wiley-Interscience |
Pages | 398 |
Release | 2007-04-23 |
Genre | Mathematics |
ISBN |
Provides a presentation of the theoretical, practical, and computational aspects of nonlinear regression. There is background material on linear regression, including a geometrical development for linear and nonlinear least squares.
Fitting Models to Biological Data Using Linear and Nonlinear Regression
Title | Fitting Models to Biological Data Using Linear and Nonlinear Regression PDF eBook |
Author | Harvey Motulsky |
Publisher | Oxford University Press |
Pages | 352 |
Release | 2004-05-27 |
Genre | Mathematics |
ISBN | 9780198038344 |
Most biologists use nonlinear regression more than any other statistical technique, but there are very few places to learn about curve-fitting. This book, by the author of the very successful Intuitive Biostatistics, addresses this relatively focused need of an extraordinarily broad range of scientists.
Nonlinear Regression Modeling for Engineering Applications
Title | Nonlinear Regression Modeling for Engineering Applications PDF eBook |
Author | R. Russell Rhinehart |
Publisher | John Wiley & Sons |
Pages | 402 |
Release | 2016-09-26 |
Genre | Mathematics |
ISBN | 1118597966 |
Since mathematical models express our understanding of how nature behaves, we use them to validate our understanding of the fundamentals about systems (which could be processes, equipment, procedures, devices, or products). Also, when validated, the model is useful for engineering applications related to diagnosis, design, and optimization. First, we postulate a mechanism, then derive a model grounded in that mechanistic understanding. If the model does not fit the data, our understanding of the mechanism was wrong or incomplete. Patterns in the residuals can guide model improvement. Alternately, when the model fits the data, our understanding is sufficient and confidently functional for engineering applications. This book details methods of nonlinear regression, computational algorithms,model validation, interpretation of residuals, and useful experimental design. The focus is on practical applications, with relevant methods supported by fundamental analysis. This book will assist either the academic or industrial practitioner to properly classify the system, choose between the various available modeling options and regression objectives, design experiments to obtain data capturing critical system behaviors, fit the model parameters based on that data, and statistically characterize the resulting model. The author has used the material in the undergraduate unit operations lab course and in advanced control applications.