R/C2/Introduction-to-ggplot2/English

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Title of the script: Introduction to ggplot2

Author: Varshit Dubey (CoE Pune) and Sudhakar Kumar (IIT Bombay)

Keywords: R, RStudio, graphics, plot, ggplot2, ggplot, video tutorial, spoken tutorial 


Visual Cue Narration
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Opening Slide

Welcome to this tutorial on Introduction to ggplot2.
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Learning Objective

In this tutorial, we will learn about
  • Need for data visualization
  • Basic plot function in R
  • ggplot2 package
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Pre-requisites

https://spoken-tutorial.org/

To understand this tutorial, you should know,
  • Basics of Statistics and
  • Data frames

If not, please locate the relevant tutorials on R on this website.

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System Specifications

This tutorial is recorded on
  • Ubuntu Linux OS version 16.04
  • R version 3.4.4
  • RStudio version 1.1.463

Install R version 3.2.0 or higher.

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Download Files

For this tutorial, we will use,
  • A data frame moviesData.csv and
  • A script file ggPlots.R.

Please download these files from the Code files link of this tutorial.

[Computer screen]

Highlight moviesData.csv and ggPlots.R in the folder Plots

I have downloaded and moved these files to ggPlots folder.

This folder is located in myProject folder on my Desktop.

I have also set ggPlots folder as my Working Directory.

Now let us learn about visualization.
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Need for Data Visualization

  • Visualization is an important tool for insight generation.
  • It is used to understand the data structure, identify outliers and find patterns.
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Data visualization in R

There are 2 methods of data visualization in R:
  • Basics graphics and
  • Grammar of graphics (popularly known as ggplot2)
Let us switch to RStudio.
Highlight ggPlots.R in the Files window of RStudio. Open the script ggPlots.R in RStudio.
Highlight the Source button.

Click on Source button.

Let us run this script by clicking on the Source button.
Highlight movies in the Environment window movies data frame is loaded in the workspace.

This data frame will be used later in this tutorial.

[RStudio]

x <- seq(-pi, pi, 0.1)

y <- sin(x)

plot(x, y)

First, we will plot a sine curve by taking equally spaced samples.

In the Source window, type the following commands.

Highlight seq in the Source window Here, we have used the seq function to generate a sequence.

This sequence is from minus pi to plus pi with an interval of zero point one.

Highlight plot in the Source window In plot command, the first argument is x and the second argument y is Sine of x.
Highlight run button in the Source window Save the script and run the last three lines of code by pressing Ctrl + Enter keys simultaneously.
Highlight the plot in the Plots window A plot of sine curve appears in the Plots window.
Highlight Plots window In the Plots window, click on the Zoom button to maximize the plot.
Highlight the plot Now we will add some more layers in this plot.
Click on X button to close. Click on Close (X) button to close this plot.
[RStudio]

plot(x, y, main="Plotting a Sine Curve", ylab="sin(x)")

In the Source window, type the following commands.

Here, we have added main and ylab arguments to the plot function.

Highlight Run button in the Source window. Run the current line.
Highlight Plots window In the Plots window, click on Zoom button to maximize the plot.
Highlight Y-axis of the plot The title of the plot and label of Y-axis have been added to the plot.
Click on X button to close. Close this plot.
[RStudio]

plot(x, y, main="Plotting sine curve", ylab="sin(x)", type="l", col="blue")

Now we will learn how to change the type of plot.

In the Source window, type the following commands.

Highlight type in the plot function Here, we have used the type argument and set it to l.

It means that the type of plot we need is lines.

Highlight col in the plot function col equal to blue, changes the colour of the plot to blue.
Highlight Run button in the Source window Run the current line.
Highlight the plot The type and color of the plot have been changed.
Cursor on the interface. Now, we will plot one more graph on the same plot.

Let us plot cosine of x along with sine of x on the same plot.

[RStudio]

plot(x, sin(x), main="Plotting Sine and Cosine graphs on the same plot",

ylab=" ", type="l", col="blue")

lines(x, cos(x), col="red")

In the Source window, type the following commands.
Highlight plot in the Source window This command plots sine of x using the plot function.
Highlight lines in the Source window Next, we use lines function to plot cosine of x.
Highlight lines in the Source window After the first line is plotted, the lines function is used.

It takes an additional vector cos of x as an input to draw the second line in the plot.

Highlight Run button in the Source window Run the last two lines of code by pressing Ctrl+Enter keys simultaneously.
Highlight the plot The two graphs appear in the same plot window.

Here we can add a legend to the plot to differentiate between the multiple graphs.

For this, we will use legend function.

[RStudio] legend("topleft",

c("sin(x)", "cos(x)"),

fill=c("blue","red"))

In the Source window, type the following command.
Drag the boundary to resize. I will resize the Source window.
Highlight topleft in the Source window The first argument refers to the coordinates for placing the legend in our plot.

We have set the coordinates to topleft.

Highlight c("sin(x)", "cos(x)") in the Source window The second argument is the names to be given.

Since we have plotted sine and cosine functions, we will pass these two names as a vector.

Highlight fill in the Source window Next, we have used the fill argument to specify the graphs by their colors.

Recall that, sine function is plotted in blue and cosine function in red.

Drag the boundary to resize. I will resize the Plots window.
Highlight Run button in the Source window Run the last three lines of code by pressing Ctrl+Enter keys simultaneously.
Highlight Files and Plots window In the Plots window, click on Zoom button to maximize the plot.
Highlight the plot The two plots with their names appear in the same graph.
Click on X button in the Plot window. Close the plot.
Cursor on the interface. So far, we have discussed the basic graphics in R language.

Now, we will learn about the grammar of graphics by using ggplot2 package.

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Introduction to ggplot2 package

  • ggplot2 package was created by Hadley Wickham in 2005.
  • It offers a powerful graphics language for creating elegant and complex plots.
Let us switch to RStudio.
Drag the boundary to resize. I will resize the Plots window.
Cursor on the interface. To use any package in R, we need to install and then load it.

As I have already installed ggplot2 package, I will load this directly.

[RStudio]

install.packages("ggplot2")

If you have not installed the package, please use install dot packages function.

Please make sure that you are connected to the Internet while installing the packages.

Click at the top of the script ggPlots.R To load this package, we will add the library at the top of the script.
[RStudio]

library(ggplot2)

In the Source window, scroll up to the top of the script.

Now, at the top of the script, type library and ggplot2 in parentheses.

Save the script and run this line.

[RStudio]

Point to the line having legend function

Now, in the Source window, click on the next line after the legend function.
Highlight movies in the Environment window We will use movies data frame for exploring ggplot2 package.
[RStudio]

View(movies)

Let us view the objects available in movies data frame.

In the Source window, type View and movies in parentheses.

Highlight Run button in the Source window Run the current line.
Highlight movies in the Source window movies data frame opens in the Source window.
Highlight movies in the Source window Now, we will create a simple scatter plot with two different objects of movies.

Remember, a scatter plot is a graph in which the values of two variables are plotted along the axes.

Highlight the scroll bar in the Source window In the Source window, scroll from left to right to see the remaining objects of movies data frame.
Highlight critics_score and audience_score in the Source window Suppose, we want to visualize the correlation between critics_score and audience_score.
Highlight ggPlots.R in the Source window In the Source window, click on the script ggPlots.R
[RStudio]

ggplot(data = movies,

mapping = aes(x=critics_score, y = audience_score)) +

geom_point()

In the Source window, type the following command.
Highlight ggplot in the Source window ggplot function takes three basic arguments:
  • Data
  • Aesthetics
  • Geometry
Highlight data in the Source window

Highlight mapping in the Source window

Highlight aes in the Source window

In ggplot function, we have used the following arguments:
  • data, which refers to the data set to be used for plotting.
We have set data equal to movies.
  • mapping, which is used to apply aesthetics mapping to the plot.
  • aes, which is used to specify the mapping of objects on X and Y axes.

We will learn more about aesthetics mapping later in this series.

Highlight geom_point in the Source window geom underscore point is used to draw points defined by X and Y coordinates.
Highlight Run button in the Source window Run the current line.
Highlight Plots window Scatter plot appears in the Plots window.
Highlight Plots window In the Plots window, click on the Zoom button to maximize the plot.
Highlight the plot We can see that there is a positive correlation between critics_score and audience_score.

Now we will learn how to save a plot generated by ggplot function.

Click on x button to close the plot. Close this plot.
For saving the plots, there is a function named ggsave in ggplot2 package.
[RStudio]

?ggsave

To know the syntax of ggsave function, we will access the Help section in RStudio.


In the Console window, type question mark ggsave and press Enter.

I will resize the Help window.
Highlight Help in RStudio


Highlight filename in Help

Highlight plot in Help

The first argument in this function is the filename.

Next, there is the argument named plot which means the plot to be saved.

By default, it will save the last plot.

Highlight Plots window Click on the Plots window.
Highlight plot in the Plots window Let us save our scatter plot with a name scatter underscore plot in png format.
[RStudio]

ggsave("scatter_plot.png")

In the Source window, type the following command.
Highlight Run button in the Source window Save the script and run the current line.
Highlight Files window Click on the Files tab.
Highlight scatter_plot.png in the Files window The plot has been saved in our current working directory.
Let us summarize what we have learnt.
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Summary

In this tutorial, we have learnt about,
  • Need for data visualization
  • Basic plot function in R
  • ggplot2 package
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Assignment

We now suggest an assignment.
  • Consider the built-in data set mtcars. Find the numerical variables in this data set.
  • Make a scatter plot from the objects named mpg and wt in this data set.
  • Save the plot in .jpeg format.
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Acknowledgment

The Spoken Tutorial project is funded by NMEICT, MHRD, Govt. of India
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Thank You

The script for this tutorial was contributed by Varshit Dubey (CoE Pune).


This is Sudhakar Kumar from IIT Bombay signing off. Thanks for watching.

Contributors and Content Editors

Madhurig, Nancyvarkey, Sudhakarst