Book Image

R Data Visualization Recipes

By : Vitor Bianchi Lanzetta
Book Image

R Data Visualization Recipes

By: Vitor Bianchi Lanzetta

Overview of this book

R is an open source language for data analysis and graphics that allows users to load various packages for effective and better data interpretation. Its popularity has soared in recent years because of its powerful capabilities when it comes to turning different kinds of data into intuitive visualization solutions. This book is an update to our earlier R data visualization cookbook with 100 percent fresh content and covering all the cutting edge R data visualization tools. This book is packed with practical recipes, designed to provide you with all the guidance needed to get to grips with data visualization using R. It starts off with the basics of ggplot2, ggvis, and plotly visualization packages, along with an introduction to creating maps and customizing them, before progressively taking you through various ggplot2 extensions, such as ggforce, ggrepel, and gganimate. Using real-world datasets, you will analyze and visualize your data as histograms, bar graphs, and scatterplots, and customize your plots with various themes and coloring options. The book also covers advanced visualization aspects such as creating interactive dashboards using Shiny By the end of the book, you will be equipped with key techniques to create impressive data visualizations with professional efficiency and precision.
Table of Contents (19 chapters)
Title Page
Credits
About the Author
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface

Adding variability estimates to plots with geom_errrorbar()


The previous recipe can be improved. One must request a sort of a variability analysis in addition the bar chart. We came to the conclusion 9-month salary was higher for men of every rank but what if maximum women salary were much higher than men or the minimum much lower.

ggplot2 certainly has functions draw variability intervals; one of them is the geom_errorbar(). The device drawn by such function demands ymin and ymax aesthetics arguments. Variability intervals can fit information of any kind: standard deviations, minimum and maximum values. Limitations are given only by creativity.

Getting ready

To make it happen, our departure point is going to be the new_data object. Thus, we need to make sure that the car package is installed and run step 1 from Recipe Plotting a bar graphic with aggregated data using geom_col(). Next code block is doing both things:

> if( !require(car)){ install.packages('car')}
> new_data <- aggregate...