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R Data Analysis Cookbook, Second Edition

You're reading from   R Data Analysis Cookbook, Second Edition Customizable R Recipes for data mining, data visualization and time series analysis

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Product type Paperback
Published in Sep 2017
Publisher Packt
ISBN-13 9781787124479
Length 560 pages
Edition 2nd Edition
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Authors (3):
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Kuntal Ganguly Kuntal Ganguly
Author Profile Icon Kuntal Ganguly
Kuntal Ganguly
Shanthi Viswanathan Shanthi Viswanathan
Author Profile Icon Shanthi Viswanathan
Shanthi Viswanathan
Viswa Viswanathan Viswa Viswanathan
Author Profile Icon Viswa Viswanathan
Viswa Viswanathan
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Table of Contents (14) Chapters Close

Preface 1. Acquire and Prepare the Ingredients - Your Data FREE CHAPTER 2. What's in There - Exploratory Data Analysis 3. Where Does It Belong? Classification 4. Give Me a Number - Regression 5. Can you Simplify That? Data Reduction Techniques 6. Lessons from History - Time Series Analysis 7. How does it look? - Advanced data visualization 8. This may also interest you - Building Recommendations 9. It's All About Your Connections - Social Network Analysis 10. Put Your Best Foot Forward - Document and Present Your Analysis 11. Work Smarter, Not Harder - Efficient and Elegant R Code 12. Where in the World? Geospatial Analysis 13. Playing Nice - Connecting to Other Systems

Binning numerical data

Sometimes, we need to convert numerical data to categorical data or a factor. For example, Naive Bayes classification requires all variables (independent and dependent) to be categorical. In other situations, we may want to apply a classification method to a problem where the dependent variable is numeric but needs to be categorical.

Getting ready

From the code files for this chapter, store the data-conversion.csv file in the working directory of your R environment. Then read the data:

> students <- read.csv("data-conversion.csv") 

How to do it...

Income is a numeric variable, and you may want to create a categorical variable from it by creating bins. Suppose you want to label incomes of $10,000 or below as Low, incomes between $10,000 and $31,000 as Medium, and the rest as High. We can do the following:

  1. Create a vector of break points:
> b <- c(-Inf, 10000, 31000, Inf) 
  1. Create a vector of names for break points:
> names <- c("Low", "Medium", "High") 
  1. Cut the vector using the break points:
> students$Income.cat <- cut(students$Income, breaks = b, labels = names) 
> students

Age State Gender Height Income Income.cat
1 23 NJ F 61 5000 Low
2 13 NY M 55 1000 Low
3 36 NJ M 66 3000 Low
4 31 VA F 64 4000 Low
5 58 NY F 70 30000 Medium
6 29 TX F 63 10000 Low
7 39 NJ M 67 50000 High
8 50 VA M 70 55000 High
9 23 TX F 61 2000 Low
10 36 VA M 66 20000 Medium

How it works...

The cut() function uses the ranges implied by the breaks argument to infer the bins, and names them according to the strings provided in the labels argument. In our example, the function places incomes less than or equal to 10,000 in the first bin, incomes greater than 10,000 and less than or equal to 31,000 in the second bin, and incomes greater than 31,000 in the third bin. In other words, the first number in the interval is not included but the second one is. The number of bins will be one less than the number of elements in breaks. The strings in names become the factor levels of the bins.

If we leave out names, cut() uses the numbers in the second argument to construct interval names, as you can see here:

> b <- c(-Inf, 10000, 31000, Inf) 
> students$Income.cat1 <- cut(students$Income, breaks = b)
> students

Age State Gender Height Income Income.cat Income.cat1
1 23 NJ F 61 5000 Low (-Inf,1e+04]
2 13 NY M 55 1000 Low (-Inf,1e+04]
3 36 NJ M 66 3000 Low (-Inf,1e+04]
4 31 VA F 64 4000 Low (-Inf,1e+04]
5 58 NY F 70 30000 Medium (1e+04,3.1e+04]
6 29 TX F 63 10000 Low (-Inf,1e+04]
7 39 NJ M 67 50000 High (3.1e+04, Inf]
8 50 VA M 70 55000 High (3.1e+04, Inf]
9 23 TX F 61 2000 Low (-Inf,1e+04]
10 36 VA M 66 20000 Medium (1e+04,3.1e+04]

There's more...

You might not always be in a position to identify the breaks manually and may instead want to rely on R to do this automatically.

Creating a specified number of intervals automatically

Rather than determining the breaks and hence the intervals manually, as mentioned earlier, we can specify the number of bins we want, say n, and let the cut() function handle the rest automatically. In this case, cut() creates n intervals of approximately equal width, as follows:

> students$Income.cat2 <- cut(students$Income,     breaks = 4, labels = c("Level1", "Level2",       "Level3","Level4")) 
You have been reading a chapter from
R Data Analysis Cookbook, Second Edition - Second Edition
Published in: Sep 2017
Publisher: Packt
ISBN-13: 9781787124479
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