Book Image

RStudio for R Statistical Computing Cookbook

By : Andrea Cirillo
Book Image

RStudio for R Statistical Computing Cookbook

By: Andrea Cirillo

Overview of this book

The requirement of handling complex datasets, performing unprecedented statistical analysis, and providing real-time visualizations to businesses has concerned statisticians and analysts across the globe. RStudio is a useful and powerful tool for statistical analysis that harnesses the power of R for computational statistics, visualization, and data science, in an integrated development environment. This book is a collection of recipes that will help you learn and understand RStudio features so that you can effectively perform statistical analysis and reporting, code editing, and R development. The first few chapters will teach you how to set up your own data analysis project in RStudio, acquire data from different data sources, and manipulate and clean data for analysis and visualization purposes. You'll get hands-on with various data visualization methods using ggplot2, and you will create interactive and multidimensional visualizations with D3.js. Additional recipes will help you optimize your code; implement various statistical models to manage large datasets; perform text analysis and predictive analysis; and master time series analysis, machine learning, forecasting; and so on. In the final few chapters, you'll learn how to create reports from your analytical application with the full range of static and dynamic reporting tools that are available in RStudio so that you can effectively communicate results and even transform them into interactive web applications.
Table of Contents (15 chapters)
RStudio for R Statistical Computing Cookbook
Credits
About the Author
About the Reviewer
www.PacktPub.com
Preface
Index

Writing modular code in RStudio


Using modular code is a best practice of computer programming. It basically involves dividing your code into independent pieces, where one module takes as an input the output of another one.

This recipe implements modular programming by leveraging the + function, which lets you execute R scripts from another script (or from the R terminal session itself) by collecting it in the local environment code output.

The advantage of modular code lies in the orthogonality principle: two pieces of code are orthogonal to each other if changing the first has no effect on the other.

Take, for instance, two pieces of code: the first one gives as an output a ZIP code from an address, and the second one takes that ZIP code and calculates the shipping cost for that ZIP code.

Until the first module gives a ZIP code as an output, the second module is totally unaware of how this code was defined. That is to say that any change in the first code will have no effect on the second one...