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Regression Analysis with R

You're reading from   Regression Analysis with R Design and develop statistical nodes to identify unique relationships within data at scale

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Product type Paperback
Published in Jan 2018
Publisher Packt
ISBN-13 9781788627306
Length 422 pages
Edition 1st Edition
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Concepts
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Author (1):
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Giuseppe Ciaburro Giuseppe Ciaburro
Author Profile Icon Giuseppe Ciaburro
Giuseppe Ciaburro
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Table of Contents (11) Chapters Close

Preface 1. Getting Started with Regression FREE CHAPTER 2. Basic Concepts – Simple Linear Regression 3. More Than Just One Predictor – MLR 4. When the Response Falls into Two Categories – Logistic Regression 5. Data Preparation Using R Tools 6. Avoiding Overfitting Problems - Achieving Generalization 7. Going Further with Regression Models 8. Beyond Linearity – When Curving Is Much Better 9. Regression Analysis in Practice 10. Other Books You May Enjoy

Generalized Additive Model


A GAM is a GLM in which the linear predictor is given by a user-specified sum of smooth functions of the covariates plus a conventional parametric component of the linear predictor. Assume that a sample of n objects has a response variable y and r explanatory variables x1,. . . , xr. In these assumptions, the regression equation becomes:

Here, the functions f1, f2,…., fr are different nonlinear functions on variables x. Into the GAM, the linear relationship between the response and predictors are replaced by several nonlinear smooth functions to model and capture the nonlinearities in the data.

We can see the GAM as a generalization of a multiple regression model without interactions between predictors. Among the advantages of this approach, in addition to greater flexibility than the linear model, the good algorithmic convergence rate should also be mentioned for problems with many explanatory variables. The biggest drawback lies in the complexity of the parameter...

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