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Advanced Analytics with R and Tableau

You're reading from   Advanced Analytics with R and Tableau Advanced analytics using data classification, unsupervised learning and data visualization

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Product type Paperback
Published in Aug 2017
Publisher Packt
ISBN-13 9781786460110
Length 178 pages
Edition 1st Edition
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Authors (3):
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Roberto Rösler Roberto Rösler
Author Profile Icon Roberto Rösler
Roberto Rösler
Ruben Oliva Ramos Ruben Oliva Ramos
Author Profile Icon Ruben Oliva Ramos
Ruben Oliva Ramos
Jen Stirrup Jen Stirrup
Author Profile Icon Jen Stirrup
Jen Stirrup
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Table of Contents (10) Chapters Close

Preface 1. Advanced Analytics with R and Tableau FREE CHAPTER 2. The Power of R 3. A Methodology for Advanced Analytics Using Tableau and R 4. Prediction with R and Tableau Using Regression 5. Classifying Data with Tableau 6. Advanced Analytics Using Clustering 7. Advanced Analytics with Unsupervised Learning 8. Interpreting Your Results for Your Audience Index

Working with dirty data

The process of cleaning data involves tidying the data, which usually results in making the dataset smaller because we have cleaned out some of the dirty data. What makes data dirty?

Dirty data can be due to invalid data, which is data that is false, incomplete, or doesn't conform to the accepted standard. An example of invalid data could be formatting errors, or data that is out of an acceptable range. Invalid data could also have the wrong type. For example, the Asterix is invalid because the acceptable formatted data is for letters only, so it can be removed.

Dirty data can be due to missing data, which is data where no value is stored. An example of missing data is data that has not been stored due to a faulty sensor. We can see that some data is missing, so it is removed from consideration.

Dirty data could also have null values. If data has null values, then programs may respond differently to the data on that basis. The nulls will need to be considered...

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