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Hands-On Exploratory Data Analysis with R

You're reading from   Hands-On Exploratory Data Analysis with R Become an expert in exploratory data analysis using R packages

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Product type Paperback
Published in May 2019
Publisher Packt
ISBN-13 9781789804379
Length 266 pages
Edition 1st Edition
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Authors (2):
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Radhika Datar Radhika Datar
Author Profile Icon Radhika Datar
Radhika Datar
Harish Garg Harish Garg
Author Profile Icon Harish Garg
Harish Garg
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Table of Contents (17) Chapters Close

Preface 1. Section 1: Setting Up Data Analysis Environment
2. Setting Up Our Data Analysis Environment FREE CHAPTER 3. Importing Diverse Datasets 4. Examining, Cleaning, and Filtering 5. Visualizing Data Graphically with ggplot2 6. Creating Aesthetically Pleasing Reports with knitr and R Markdown 7. Section 2: Univariate, Time Series, and Multivariate Data
8. Univariate and Control Datasets 9. Time Series Datasets 10. Multivariate Datasets 11. Section 3: Multifactor, Optimization, and Regression Data Problems
12. Multi-Factor Datasets 13. Handling Optimization and Regression Data Problems 14. Section 4: Conclusions
15. Next Steps 16. Other Books You May Enjoy

Tietjen-Moore test

The Tietjen-Moore test algorithm is a generalization of the Grubbs' test algorithm, which is basically used for univariate datasets. The following algorithm depicts the detection of the multiple outliers in a univariate dataset by applying the Tietjen-Moore test algorithm. The following are the parameters used:

  • Input parameter: Input data, including outliers
  • Output parameters: Original data with outliers marked

The workflow is shown as follows:

The step-wise approach will help us to create the function in the desired way. We will carry out the following steps to implement the detection of outliers in R for the bank dataset:

  1. Create a function that assists in generating the outliers in R:
> TietjenMoore <- function(dataSeries,k)
+ {
+ n = length(dataSeries)
+ ## Compute the absolute residuals.
+ r = abs(dataSeries - mean(dataSeries))
+ ## Sort data...
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