A Teaching Tool for Nonlinear Regression: <i>Visual Fit</i>

Type: Article

Publication Date: 1999-07-01

Citations: 1

DOI: https://doi.org/10.1080/10691898.1999.12131272

Abstract

We describe a Java applet that allows users to see and learn the fitting of regression models in a manner that is both visual and interactive, as well as consonant for linear and nonlinear models. In addition, this program familiarizes users with the fact that many different parameterizations exist for a single function, and it provides insight about the relationship between these models. Called Visual Fit, this program draws scatterplots of data and allows users to fit various nonlinear models to the data. The program can also provide least squares estimates or true population parameters for comparison with the estimates made by the user. We discuss what types of parameters can be represented in a visually obvious way and which cannot. Visual Fit may be useful for both introductory statistics classes and higher-level courses. Visual Fit is available at http://www.amstat.org/publications/jse/secure/v7n2/visualfit.html

Locations

  • Journal of Statistics Education - View - PDF

Similar Works

Action Title Year Authors
+ Statistical Tools for Nonlinear Regression 1996 Sylvie Huet
Annie A. Bouvier
Marie-Anne Gruet
E. Jolivet
+ The General Linear Model I 2022 Pablo Inchausti
+ Statistical Tools for Nonlinear Regression: a Practical Guide With S-PLUS and R Examples 2004 Christine M. Anderson‐Cook
+ PDF Chat Nonlinear Regression Modelling: A Primer with Applications and Caveats 2024 Timothy E. O’Brien
Jack Silcox
+ Empirical Modeling: Choosing Models and Fitting Them to Data 2016 Glenn Ledder
+ PDF Chat A Simple Method to Visualize Results in Nonlinear Regression Models 2012 Daniel J. Henderson
Subal C. Kumbhakar
Christopher F. Parmeter
+ “What to do ‘Til the Nonlinear Model Comes”: Integrating a Plethora of Computational and Graphic Tools for Analysis of Multivariate Data 1983 James M. Malone
+ Fitting curves to data using nonlinear regression: a practical and nonmathematical review 1987 Harvey Motulsky
Lennart A. Ransnäs
+ Plots And Testing For Multivariate Linear Regression 2013 Pelawa Watagoda
Lasanthi C. R
+ Miscellaneous nonlinear estimation tools for R 2014 John C. Nash
+ nlstools: Tools for Nonlinear Regression Analysis 2007 Florent Baty
Marie Laure Delignette‐Muller
AurĂŠlie Siberchicot
+ Data-driven testing the fit of linear models 2000 Vladimir Spokoiny
+ Linear Regression 2020 Hong Zhou
+ performance: An R Package for Assessment, Comparison and Testing of Statistical Models 2021 Daniel LĂźdecke
Mattan S. Ben‐Shachar
Indrajeet Patil
Philip Waggoner
Dominique Makowski
+ Generalized Linear Models With Examples in R 2018 Peter K. Dunn
Gordon K. Smyth
+ A Reader's Guide to Smoothing Scatterplots and Graphical Methods for Regression 1982 William S. Cleveland
+ An Introduction to Computational Statistics: Regression Analysis 1996 Robert L. Schaefer
Robert I. Jennrich
+ Statistical Tools for Nonlinear Regression: A Practical Guide With S-PLUS and R Examples (2nd ed.) (Book) 2004 Christine M. Anderson‐Cook
+ 23 Graphical methods for linear models 1993 Ali S. Hadi
+ A graphical method for assessing the fit of regression variance functions 2007 Iain Pardoe
R. Dennis Cook

Works That Cite This (1)

Action Title Year Authors
+ Nonlinear Regression 2008 Thomas P. Ryan

Works Cited by This (1)

Action Title Year Authors
+ Introduction to the Practice of Statistics 1994 Eric R. Ziegel
D. Moore
G. McCabe