An Excel Solver Exercise to Introduce Nonlinear Regression

ABSTRACT Business students taking business analytics courses that have significant predictive modeling components, such as marketing research, data mining, forecasting, and advanced financial modeling, are introduced to nonlinear regression using application software that is a “black box” to the stu...

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Veröffentlicht in:Decision sciences journal of innovative education 2013-07, Vol.11 (3), p.263-278
1. Verfasser: Pinder, Jonathan P.
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description ABSTRACT Business students taking business analytics courses that have significant predictive modeling components, such as marketing research, data mining, forecasting, and advanced financial modeling, are introduced to nonlinear regression using application software that is a “black box” to the students. Thus, although correct models are estimated, students often do not obtain a thorough understanding of the nonlinear estimation process. The exercise presented in this article was created to demonstrate to students the need for nonlinear regression estimation—rather than using linear transformations and Ordinary Least Squares (OLS) and subsequently demonstrate the nonlinear optimization process to estimate nonlinear regression models. Using the spreadsheet exercise, students can see effects on the fit of the model by changing the model parameters as they change the values of the decision variables. After applying the spreadsheet to further exercises, students have expressed a deep understanding of the linear regression software. This exercise is innovative because the active learning exercise requires the students to make the logical connections between the structure of the model, the model's parameters, and the objective function.
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source Education Source (EBSCOhost); Wiley Online Library Journals Frontfile Complete; EBSCOhost Business Source Complete
subjects Active Learning
Analytics
and Regression
Business Administration Education
Business education
College Students
Computation
Computer Software
Computer Uses in Education
Estimating techniques
Learning
Learning Activities
Least Squares Statistics
Nonlinear
Optimization
Regression (Statistics)
Regression analysis
Spreadsheets
Students
Transformations (Mathematics)
title An Excel Solver Exercise to Introduce Nonlinear Regression
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