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RStudio for R Statistical Computing Cookbook

You're reading from   RStudio for R Statistical Computing Cookbook Over 50 practical and useful recipes to help you perform data analysis with R by unleashing every native RStudio feature

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Product type Paperback
Published in Apr 2016
Publisher
ISBN-13 9781784391034
Length 246 pages
Edition 1st Edition
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Author (1):
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Andrea Cirillo Andrea Cirillo
Author Profile Icon Andrea Cirillo
Andrea Cirillo
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Table of Contents (10) Chapters Close

Preface 1. Acquiring Data for Your Project 2. Preparing for Analysis – Data Cleansing and Manipulation FREE CHAPTER 3. Basic Visualization Techniques 4. Advanced and Interactive Visualization 5. Power Programming with R 6. Domain-specific Applications 7. Developing Static Reports 8. Dynamic Reporting and Web Application Development Index

Performing time series decomposition using the stl() function


Nearly every phenomenon can be represented as a time series.

It is therefore not surprising that time series analysis is one of most popular topics within data-science communities.

As is often the case, R provides a great tool for time-series decomposition, starting with the stl() function provided within base R itself. This function will be the base of our recipe.

Getting ready

This recipe will mainly use the stl() function, which implements the Loess() method for time-series decomposition.

Using this method, we are able to separate a time series into three different parts:

  • Trend component: This highlights the core trend of the phenomenon if perturbations and external influence were not in place

  • Seasonal component: This is linked to cyclical influences

  • Remainder: This groups all non-modeled (in hypothesis random) effects

As mentioned earlier, this function is provided with every R base version, and we therefore don't need to install...

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