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Practical Machine Learning with R

You're reading from  Practical Machine Learning with R

Product type Book
Published in Aug 2019
Publisher Packt
ISBN-13 9781838550134
Pages 416 pages
Edition 1st Edition
Languages
Authors (3):
Brindha Priyadarshini Jeyaraman Brindha Priyadarshini Jeyaraman
Profile icon Brindha Priyadarshini Jeyaraman
Ludvig Renbo Olsen Ludvig Renbo Olsen
Profile icon Ludvig Renbo Olsen
Monicah Wambugu Monicah Wambugu
Profile icon Monicah Wambugu
View More author details
Toc

Table of Contents (8) Chapters close

About the Book 1. An Introduction to Machine Learning 2. Data Cleaning and Pre-processing 3. Feature Engineering 4. Introduction to neuralnet and Evaluation Methods 5. Linear and Logistic Regression Models 6. Unsupervised Learning 1. Appendix

Handling Redundant Features

Redundant features are those that are highly correlated with each other. They will contain similar information with respect to their output variables. We can remove such features by finding correlation coefficients between features.

Exercise 30: Identifying Redundant Features

In this exercise, we will find redundant features, select any one among them, and remove them.

  1. Attach the caret package:

    #Loading the library

    library(caret)

  2. Load the GermanCredit dataset:

    # load the German Credit Data

    data(GermanCredit)

  3. Create a correlation matrix:

    # calculating the correlation matrix

    correlationMatrix <- cor(GermanCredit[,1:9])

  4. Print the correlation matrix:

    # printing the correlation matrix

    print(correlationMatrix)

    The output is as follows:

    Figure 3.12: The correlation matrix
  5. To find attributes that have high correlation, set the cutoff as 0.5.

    # finding the attributes that are highly corrected

    filterCorrelation <- findCorrelation(correlationMatrix, cutoff...

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