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Machine Learning with R Quick Start Guide

You're reading from  Machine Learning with R Quick Start Guide

Product type Book
Published in Mar 2019
Publisher Packt
ISBN-13 9781838644338
Pages 250 pages
Edition 1st Edition
Languages
Author (1):
Iván Pastor Sanz Iván Pastor Sanz
Profile icon Iván Pastor Sanz
Toc

Embedded methods

The main difference between filter and wrapper approaches is that in filter approaches, such as embedded methods, you cannot separate the learning and feature selection parts.

Regularization methods are the most common type of embedded feature selection methods.

In classification problems such as this one, the logistic regression method cannot handle the multi-collinearity problem, which occurs when variables are very correlated. When the number of observations is not much larger than the number of variables of covariates, p, then there can be a lot of variability. Consequently, this variability could even increase the likelihood by simply adding more parameters, resulting in overfitting.

If variables are highly correlated or if collinearity exists, we expect the model parameters and variance to be inflated. The high variance is because of the wrongly specified...

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