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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
Languages
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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

Detecting outliers

Outliers in data can distort predictions and affect the accuracy, if you don't detect and handle them appropriately, especially in the data preprocessing stage.

So, identifying the extreme values is important, as it can drastically introduce bias in the analytic pipeline and affect predictions. In this recipe, we will discuss the ways to detect outliers and how to handle them.

Getting ready

Download the files for this chapter and store the ozone.csv file in your R working directory. Read the file using the read.csv() command and save it in a variable:

> ozoneData <- read.csv("ozone.csv", stringsAsFactors=FALSE)

How to do it...

Perform the following steps to detect outliers in the dataset:

  1. Detect outliers in the univariate continuous variable:
>outlier_values <- boxplot.stats(ozoneData$pressure_height)$out

>boxplot(ozoneData$pressure_height, main="Pressure Height", boxwex=0.1)

>mtext(paste("Outliers: ", paste(outlier_values, collapse=", ")), cex=0.6)

The output would be the following screenshot:

  1. Detect outliers in bivariate categorical variables:
> boxplot(ozone_reading ~ Month, data=ozoneData, main="Ozone reading across months") 

The output would be the following screenshot:

How it works...

The most commonly used method to detect outliers is visualization of the data, through boxplot, histogram, or scatterplot.

The boxplot.stats()$out function fetches the values of data points that lie beyond the extremes of the whiskers. The boxwex attribute is a scale factor that is applied to all the boxes; it improves the appearance of the plot by making the boxes narrower. The mtext() function places a text outside the plot area, but within the plot window.

In the case of continuous variables, outliers are those observations that lie outside 1.5 * IQR, where Inter Quartile Range or IQR, is the difference between the 75th and 25th quartiles. The outliers in continuous variables show up as dots outside the whiskers of the boxplot.

In case of bivariate categorical variables, a clear pattern is noticeable and the change in the level of boxes suggests that Month seems to have an impact in ozone_reading. The outliers in respective categorical levels show up as dots outside the whiskers of the boxplot.

There's more...

Detecting and handling outliers depends mostly on your application. Once you have identified the outliers and you have decided to make amends as per the nature of the problem, you may consider one of the following approaches.

Treating the outliers with mean/median imputation

We can handle outliers with mean or median imputation by replacing the observations lower than the 5th percentile with mean and those higher than 95th percentile with median. We can use the same statistics, mean or median, to impute outliers in both directions:

> impute_outliers <- function(x,removeNA = TRUE){
quantiles <- quantile( x, c(.05, .95 ),na.rm = removeNA )
x[ x < quantiles[1] ] <- mean(x,na.rm = removeNA )
x[ x > quantiles[2] ] <- median(x,na.rm = removeNA )
x
}

> imputed_data <- impute_outliers(ozoneData$pressure_height)

Validate the imputed data through visualization:

> par(mfrow = c(1, 2))

> boxplot(ozoneData$pressure_height, main="Pressure Height having Outliers", boxwex=0.3)

> boxplot(imputed_data, main="Pressure Height with imputed data", boxwex=0.3)

The output would be the following screenshot:

Handling extreme values with capping

To handle extreme values that lie outside the 1.5 * IQR(Inter Quartile Range) limits, we could cap them by replacing those observations that lie below the lower limit, with the value of 5th percentile and those that lie above the upper limit, with the value of 95th percentile, as shown in the following code:

> replace_outliers <- function(x, removeNA = TRUE) {
pressure_height <- x
qnt <- quantile(pressure_height, probs=c(.25, .75), na.rm = removeNA)
caps <- quantile(pressure_height, probs=c(.05, .95), na.rm = removeNA)
H <- 1.5 * IQR(pressure_height, na.rm = removeNA)
pressure_height[pressure_height < (qnt[1] - H)] <- caps[1]
pressure_height[pressure_height > (qnt[2] + H)] <- caps[2]
pressure_height
}

> capped_pressure_height <- replace_outliers(ozoneData$pressure_height)

Validate the capped variable capped_pressure_height through visualization:

> par(mfrow = c(1, 2))

> boxplot(ozoneData$pressure_height, main="Pressure Height with Outliers", boxwex=0.1)

> boxplot(capped_pressure_height, main="Pressure Height without Outliers", boxwex=0.1)

The output would be the following screenshot:

Transforming and binning values

Sometimes, transforming variables can also eliminate outliers. The natural log or square root of a value reduces the variation caused by extreme values. Some predictive analytics algorithms, such as decision trees, inherently deal with outliers by using binning techniques (a form of variable transformation).

Outlier detection with LOF

Local Outlier Factor or LOF is an algorithm implemented in DMwR package for identifying density-based local outliers, by comparing the local density of a point with that of its neighbors.

Now we will calculates the local outlier factors using the LOF algorithm using k number of neighbors:

> install.packages("DMwR")
> library(DMwR)
> outlier.scores <- lofactor(ozoneData, k=3)

Finally we will output the top 5 outlier by sorting the outlier score calculated above:

> outliers <- order(outlier.scores, decreasing=T)[1:5]
> print(outliers)
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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