This book helps you understand the theory that underpins ggplot2, and will help you create new types of graphics specifically tailored to your needs. It describes the theoretical underpinnings of ggplot2 and shows you how all the pieces fit together.
If you’ve mastered the basics and want to learn more, read ggplot2: Elegant Graphics for Data Analysis. Shop desktop cutting machines including the Silhouette Cameo plus our selection of cutting materials and other. It provides a set of recipes to solve common graphics problems. Discover the creative world of Silhouette. If you want to dive into making common graphics as quickly as possible, I recommend The R Graphics Cookbook by Winston Chang. Converting the variables in R can be achieved using the toupper( ) function.
If you’d like to follow a webinar, try Plotting Anything with ggplot2 by Thomas Lin Pedersen. Solution: The problem is most easily fixed in Excel before the data is imported. If you’d like to take an online course, try Data Visualization in R With ggplot2 by Kara Woo. R for Data Science is designed to give you a comprehensive introduction to the tidyverse, and these two chapters will get you up to speed with the essentials of ggplot2 as quickly as possible. The Data Visualisation and Graphics for communication chapters in R for Data Science. Currently, there are three good places to start: If you are new to ggplot2 you are better off starting with a systematic introduction, rather than trying to learn from reading individual documentation pages.