This is an introduction to the programming language R, focused on a powerful set of tools known as the “tidyverse”. In the course you’ll learn the intertwined processes of data manipulation and visualization through the tools dplyr and ggplot2. You’ll learn to manipulate data by filtering, sorting and summarizing a real dataset of historical country data in order to answer exploratory questions. You’ll then learn to turn this processed data into informative line plots, bar plots, histograms, and more with the ggplot2 package. This gives a taste both of the value of exploratory data analysis and the power of tidyverse tools. This is a suitable introduction for people who have no previous experience in R and are interested in learning to perform data analysis.
In this chapter, you’ll learn to do three things with a table: filter for particular observations, arrange the observations in a desired order, and mutate to add or change a column. You’ll see how each of these steps lets you answer questions about your data.
Before you can work with the gapminder
dataset, you’ll need to load two R packages that contain the tools for working with it, then display the gapminder
dataset so that you can see what it contains.
To your right, you’ll see two windows inside which you can enter code: The script.R
window, and the R Console. All of your code to solve each exercise must go inside script.R
.
If you hit Submit Answer, your R script is executed and the output is shown in the R Console. DataCamp checks whether your submission is correct and gives you feedback. You can hit Submit Answer as often as you want. If you’re stuck, you can ask for a hint or a solution.
You can use the R Console interactively by simply typing R code and hitting Enter. When you work in the console directly, your code will not be checked for correctness so it is a great way to experiment and explore.
library()
function to load the dplyr
package, just like we’ve loaded the gapminder
package for you.gapminder
dataset.# Load the gapminder package
library(gapminder)
## Warning: package 'gapminder' was built under R version 3.4.4
# Load the dplyr package
library(dplyr)
## Warning: package 'dplyr' was built under R version 3.4.4
##
## Attaching package: 'dplyr'
## The following objects are masked from 'package:stats':
##
## filter, lag
## The following objects are masked from 'package:base':
##
## intersect, setdiff, setequal, union
# Look at the gapminder dataset
gapminder
## # A tibble: 1,704 x 6
## country continent year lifeExp pop gdpPercap
## <fct> <fct> <int> <dbl> <int> <dbl>
## 1 Afghanistan Asia 1952 28.8 8425333 779.
## 2 Afghanistan Asia 1957 30.3 9240934 821.
## 3 Afghanistan Asia 1962 32.0 10267083 853.
## 4 Afghanistan Asia 1967 34.0 11537966 836.
## 5 Afghanistan Asia 1972 36.1 13079460 740.
## 6 Afghanistan Asia 1977 38.4 14880372 786.
## 7 Afghanistan Asia 1982 39.9 12881816 978.
## 8 Afghanistan Asia 1987 40.8 13867957 852.
## 9 Afghanistan Asia 1992 41.7 16317921 649.
## 10 Afghanistan Asia 1997 41.8 22227415 635.
## # ... with 1,694 more rows
Now that you’ve loaded the gapminder
dataset, you can start examining and understanding it.
We’ve already loaded the gapminder
and dplyr
packages. Type gapminder
in your R terminal, to the right, to display the object.
How many observations (rows) are in the dataset?
The filter
verb extracts particular observations based on a condition. In this exercise you’ll filter for observations from a particular year.
Add a filter()
line after the pipe (%>%
) to extract only the observations from the year 1957. Remember that you use ==
to compare two values.
library(gapminder)
library(dplyr)
# Filter the gapminder dataset for the year 1957
gapminder %>%
filter(year == 1957)
## Warning: package 'bindrcpp' was built under R version 3.4.4
## # A tibble: 142 x 6
## country continent year lifeExp pop gdpPercap
## <fct> <fct> <int> <dbl> <int> <dbl>
## 1 Afghanistan Asia 1957 30.3 9240934 821.
## 2 Albania Europe 1957 59.3 1476505 1942.
## 3 Algeria Africa 1957 45.7 10270856 3014.
## 4 Angola Africa 1957 32.0 4561361 3828.
## 5 Argentina Americas 1957 64.4 19610538 6857.
## 6 Australia Oceania 1957 70.3 9712569 10950.
## 7 Austria Europe 1957 67.5 6965860 8843.
## 8 Bahrain Asia 1957 53.8 138655 11636.
## 9 Bangladesh Asia 1957 39.3 51365468 662.
## 10 Belgium Europe 1957 69.2 8989111 9715.
## # ... with 132 more rows
You can also use the filter()
verb to set two conditions, which could retrieve a single observation.
Just like in the last exercise, you can do this in two lines of code, starting with gapminder %>%
and having the filter()
on the second line. Keeping one verb on each line helps keep the code readable. Note that each time, you’ll put the pipe %>%
at the end of the first line (like gapminder %>%
); putting the pipe at the beginning of the second line will throw an error.
Filter the gapminder
data to retrieve only the observation from China in the year 2002.
library(gapminder)
library(dplyr)
# Filter for China in 2002
gapminder %>%
filter(country == "China", year == 2002)
## # A tibble: 1 x 6
## country continent year lifeExp pop gdpPercap
## <fct> <fct> <int> <dbl> <int> <dbl>
## 1 China Asia 2002 72.0 1280400000 3119.
You use arrange()
to sort observations in ascending or descending order of a particular variable. In this case, you’ll sort the dataset based on the lifeExp
variable.
gapminder
dataset in ascending order of life expectancy (lifeExp
).gapminder
dataset in descending order of life expectancy.library(gapminder)
library(dplyr)
# Sort in ascending order of lifeExp
gapminder %>%
arrange(lifeExp)
## # A tibble: 1,704 x 6
## country continent year lifeExp pop gdpPercap
## <fct> <fct> <int> <dbl> <int> <dbl>
## 1 Rwanda Africa 1992 23.6 7290203 737.
## 2 Afghanistan Asia 1952 28.8 8425333 779.
## 3 Gambia Africa 1952 30 284320 485.
## 4 Angola Africa 1952 30.0 4232095 3521.
## 5 Sierra Leone Africa 1952 30.3 2143249 880.
## 6 Afghanistan Asia 1957 30.3 9240934 821.
## 7 Cambodia Asia 1977 31.2 6978607 525.
## 8 Mozambique Africa 1952 31.3 6446316 469.
## 9 Sierra Leone Africa 1957 31.6 2295678 1004.
## 10 Burkina Faso Africa 1952 32.0 4469979 543.
## # ... with 1,694 more rows
# Sort in descending order of lifeExp
gapminder %>%
arrange(desc(lifeExp))
## # A tibble: 1,704 x 6
## country continent year lifeExp pop gdpPercap
## <fct> <fct> <int> <dbl> <int> <dbl>
## 1 Japan Asia 2007 82.6 127467972 31656.
## 2 Hong Kong, China Asia 2007 82.2 6980412 39725.
## 3 Japan Asia 2002 82 127065841 28605.
## 4 Iceland Europe 2007 81.8 301931 36181.
## 5 Switzerland Europe 2007 81.7 7554661 37506.
## 6 Hong Kong, China Asia 2002 81.5 6762476 30209.
## 7 Australia Oceania 2007 81.2 20434176 34435.
## 8 Spain Europe 2007 80.9 40448191 28821.
## 9 Sweden Europe 2007 80.9 9031088 33860.
## 10 Israel Asia 2007 80.7 6426679 25523.
## # ... with 1,694 more rows
You’ll often need to use the pipe operator (%>%
) to combine multiple dplyr verbs in a row. In this case, you’ll combine a filter()
with an arrange()
to find the highest population countries in a particular year.
Use filter()
to extract observations from just the year 1957, then use arrange()
to sort in descending order of population (pop
).
library(gapminder)
library(dplyr)
# Filter for the year 1957, then arrange in descending order of population
gapminder %>%
filter(year == 1957) %>%
arrange(desc(pop))
## # A tibble: 142 x 6
## country continent year lifeExp pop gdpPercap
## <fct> <fct> <int> <dbl> <int> <dbl>
## 1 China Asia 1957 50.5 637408000 576.
## 2 India Asia 1957 40.2 409000000 590.
## 3 United States Americas 1957 69.5 171984000 14847.
## 4 Japan Asia 1957 65.5 91563009 4318.
## 5 Indonesia Asia 1957 39.9 90124000 859.
## 6 Germany Europe 1957 69.1 71019069 10188.
## 7 Brazil Americas 1957 53.3 65551171 2487.
## 8 United Kingdom Europe 1957 70.4 51430000 11283.
## 9 Bangladesh Asia 1957 39.3 51365468 662.
## 10 Italy Europe 1957 67.8 49182000 6249.
## # ... with 132 more rows
Suppose we want life expectancy to be measured in months instead of years: you’d have to multiply the existing value by 12. You can use the mutate()
verb to change this column, or to create a new column that’s calculated this way.
mutate()
to change the existing lifeExp
column, by multiplying it by 12: 12 * lifeExp
.mutate()
to add a new column, called lifeExpMonths
, calculated as 12 * lifeExp
.library(gapminder)
library(dplyr)
# Use mutate to change lifeExp to be in months
gapminder %>%
mutate(lifeExp = 12 * lifeExp)
## # A tibble: 1,704 x 6
## country continent year lifeExp pop gdpPercap
## <fct> <fct> <int> <dbl> <int> <dbl>
## 1 Afghanistan Asia 1952 346. 8425333 779.
## 2 Afghanistan Asia 1957 364. 9240934 821.
## 3 Afghanistan Asia 1962 384. 10267083 853.
## 4 Afghanistan Asia 1967 408. 11537966 836.
## 5 Afghanistan Asia 1972 433. 13079460 740.
## 6 Afghanistan Asia 1977 461. 14880372 786.
## 7 Afghanistan Asia 1982 478. 12881816 978.
## 8 Afghanistan Asia 1987 490. 13867957 852.
## 9 Afghanistan Asia 1992 500. 16317921 649.
## 10 Afghanistan Asia 1997 501. 22227415 635.
## # ... with 1,694 more rows
# Use mutate to create a new column called lifeExpMonths
gapminder %>%
mutate(lifeExpMonths = 12 * lifeExp)
## # A tibble: 1,704 x 7
## country continent year lifeExp pop gdpPercap lifeExpMonths
## <fct> <fct> <int> <dbl> <int> <dbl> <dbl>
## 1 Afghanistan Asia 1952 28.8 8425333 779. 346.
## 2 Afghanistan Asia 1957 30.3 9240934 821. 364.
## 3 Afghanistan Asia 1962 32.0 10267083 853. 384.
## 4 Afghanistan Asia 1967 34.0 11537966 836. 408.
## 5 Afghanistan Asia 1972 36.1 13079460 740. 433.
## 6 Afghanistan Asia 1977 38.4 14880372 786. 461.
## 7 Afghanistan Asia 1982 39.9 12881816 978. 478.
## 8 Afghanistan Asia 1987 40.8 13867957 852. 490.
## 9 Afghanistan Asia 1992 41.7 16317921 649. 500.
## 10 Afghanistan Asia 1997 41.8 22227415 635. 501.
## # ... with 1,694 more rows
In this exercise, you’ll combine all three of the verbs you’ve learned in this chapter, to find the countries with the highest life expectancy, in months, in the year 2007.
gapminder
dataset:filter()
for observations from the year 2007,mutate()
to create a column lifeExpMonths
, calculated as 12 * lifeExp
, andarrange()
in descending order of that new columnlibrary(gapminder)
library(dplyr)
# Filter, mutate, and arrange the gapminder dataset
gapminder %>%
filter(year == 2007) %>%
mutate(lifeExpMonths = 12 * lifeExp) %>%
arrange(desc(lifeExpMonths))
## # A tibble: 142 x 7
## country continent year lifeExp pop gdpPercap lifeExpMonths
## <fct> <fct> <int> <dbl> <int> <dbl> <dbl>
## 1 Japan Asia 2007 82.6 1.27e8 31656. 991.
## 2 Hong Kong, Ch~ Asia 2007 82.2 6.98e6 39725. 986.
## 3 Iceland Europe 2007 81.8 3.02e5 36181. 981.
## 4 Switzerland Europe 2007 81.7 7.55e6 37506. 980.
## 5 Australia Oceania 2007 81.2 2.04e7 34435. 975.
## 6 Spain Europe 2007 80.9 4.04e7 28821. 971.
## 7 Sweden Europe 2007 80.9 9.03e6 33860. 971.
## 8 Israel Asia 2007 80.7 6.43e6 25523. 969.
## 9 France Europe 2007 80.7 6.11e7 30470. 968.
## 10 Canada Americas 2007 80.7 3.34e7 36319. 968.
## # ... with 132 more rows
You’ve already been able to answer some questions about the data through dplyr, but you’ve engaged with them just as a table (such as one showing the life expectancy in the US each year). Often a better way to understand and present such data is as a graph. Here you’ll learn the essential skill of data visualization, using the ggplot2 package. Visualization and manipulation are often intertwined, so you’ll see how the dplyr and ggplot2 packages work closely together to create informative graphs.
Throughout the exercises in this chapter, you’ll be visualizing a subset of the gapminder data from the year 1952. First, you’ll have to load the ggplot2 package, and create a gapminder_1952
dataset to visualize.
ggplot2
package after the gapminder and dplyr packages.gapminder
for observations from the year 1952, and assign it to a new dataset gapminder_1952
using the assignment operator (<-
).# Load the ggplot2 package as well
library(gapminder)
library(dplyr)
library(ggplot2)
## Warning: package 'ggplot2' was built under R version 3.4.4
# Create gapminder_1952
gapminder_1952 <- gapminder %>%
filter(year == 1952)
gapminder_1952
## # A tibble: 142 x 6
## country continent year lifeExp pop gdpPercap
## <fct> <fct> <int> <dbl> <int> <dbl>
## 1 Afghanistan Asia 1952 28.8 8425333 779.
## 2 Albania Europe 1952 55.2 1282697 1601.
## 3 Algeria Africa 1952 43.1 9279525 2449.
## 4 Angola Africa 1952 30.0 4232095 3521.
## 5 Argentina Americas 1952 62.5 17876956 5911.
## 6 Australia Oceania 1952 69.1 8691212 10040.
## 7 Austria Europe 1952 66.8 6927772 6137.
## 8 Bahrain Asia 1952 50.9 120447 9867.
## 9 Bangladesh Asia 1952 37.5 46886859 684.
## 10 Belgium Europe 1952 68 8730405 8343.
## # ... with 132 more rows
In the video you learned to create a scatter plot with GDP per capita on the x-axis and life expectancy on the y-axis (the code for that graph is shown here). When you’re exploring data visually, you’ll often need to try different combinations of variables and aesthetics.
Change the scatter plot of gapminder_1952
so that (pop
) is on the x-axis and GDP per capita (gdpPercap
) is on the y-axis.
library(gapminder)
library(dplyr)
library(ggplot2)
gapminder_1952 <- gapminder %>%
filter(year == 1952)
# Change to put pop on the x-axis and gdpPercap on the y-axis
ggplot(gapminder_1952, aes(x = pop, y = gdpPercap)) +
geom_point()
In this exercise, you’ll use ggplot2
to create a scatter plot from scratch, to compare each country’s population with its life expectancy in the year 1952.
Create a scatter plot of gapminder_1952
with population (pop
) is on the x-axis and life expectancy (lifeExp
) on the y-axis.
library(gapminder)
library(dplyr)
library(ggplot2)
gapminder_1952 <- gapminder %>%
filter(year == 1952)
# Create a scatter plot with pop on the x-axis and lifeExp on the y-axis
ggplot(gapminder_1952, aes(x = pop, y = lifeExp)) + geom_point()
You previously created a scatter plot with population on the x-axis and life expectancy on the y-axis. Since population is spread over several orders of magnitude, with some countries having a much higher population than others, it’s a good idea to put the x-axis on a log scale.
Change the existing scatter plot (code provided) to put the x-axis (representing population) on a log scale.
library(gapminder)
library(dplyr)
library(ggplot2)
gapminder_1952 <- gapminder %>%
filter(year == 1952)
# Change this plot to put the x-axis on a log scale
ggplot(gapminder_1952, aes(x = pop, y = lifeExp)) +
geom_point() + scale_x_log10()
Suppose you want to create a scatter plot with population on the x-axis and GDP per capita on the y-axis. Both population and GDP per-capita are better represented with log scales, since they vary over many orders of magnitude.
Create a scatter plot with population (pop
) on the x-axis and GDP per capita (gdpPercap
) on the y-axis. Put both the x- and y- axes on a log scale.
library(gapminder)
library(dplyr)
library(ggplot2)
gapminder_1952 <- gapminder %>%
filter(year == 1952)
# Scatter plot comparing pop and gdpPercap, with both axes on a log scale
ggplot(gapminder_1952, aes(x = pop, y = gdpPercap)) + geom_point() + scale_x_log10() + scale_y_log10()
In this lesson you learned how to use the color aesthetic, which can be used to show which continent each point in a scatter plot represents.
Create a scatter plot with population (pop
) on the x-axis, life expectancy (lifeExp
) on the y-axis, and with continent (continent
) represented by the color of the points. Put the x-axis on a log scale.
library(gapminder)
library(dplyr)
library(ggplot2)
gapminder_1952 <- gapminder %>%
filter(year == 1952)
# Scatter plot comparing pop and lifeExp, with color representing continent
ggplot(gapminder_1952, aes(x = pop, y = lifeExp, color = continent)) + geom_point() + scale_x_log10()
In the last exercise, you created a scatter plot communicating information about each country’s population, life expectancy, and continent. Now you’ll use the size of the points to communicate even more.
Modify the scatter plot so that the size of the points represents each country’s GDP per capita (gdpPercap
).
library(gapminder)
library(dplyr)
library(ggplot2)
gapminder_1952 <- gapminder %>%
filter(year == 1952)
# Add the size aesthetic to represent a country's gdpPercap
ggplot(gapminder_1952, aes(x = pop, y = lifeExp, color = continent, size = gdpPercap)) +
geom_point() +
scale_x_log10()
You’ve learned to use faceting to divide a graph into subplots based on one of its variables, such as the continent.
Create a scatter plot of gapminder_1952
with the x-axis representing population (pop
), the y-axis representing life expectancy (lifeExp
), and faceted to have one subplot per continent (continent
). Put the x-axis on a log scale.
library(gapminder)
library(dplyr)
library(ggplot2)
gapminder_1952 <- gapminder %>%
filter(year == 1952)
# Scatter plot comparing pop and lifeExp, faceted by continent
ggplot(gapminder_1952, aes(x = pop, y = lifeExp)) + geom_point() + scale_x_log10() + facet_wrap(~ continent)
All of the graphs in this chapter have been visualizing statistics within one year. Now that you’re able to use faceting, however, you can create a graph showing all the country-level data from 1952 to 2007, to understand how global statistics have changed over time.
gapminder
data:gdpPercap
) on the x-axis and life expectancy (lifeExp
) on the y-axis, with continent (continent
) represented by color and population (pop
) represented by size.year
variablelibrary(gapminder)
library(dplyr)
library(ggplot2)
# Scatter plot comparing gdpPercap and lifeExp, with color representing continent
# and size representing population, faceted by year
ggplot(gapminder, aes(x = gdpPercap, y = lifeExp, color = continent, size = pop)) + geom_point() + scale_x_log10() + facet_wrap(~ year)
So far you’ve been answering questions about individual country-year pairs, but we may be interested in aggregations of the data, such as the average life expectancy of all countries within each year. Here you’ll learn to use the group by and summarize verbs, which collapse large datasets into manageable summaries.
You’ve seen how to find the mean life expectancy and the total population across a set of observations, but mean()
and sum()
are only two of the functions R provides for summarizing a collection of numbers. Here, you’ll learn to use the median()
function in combination with summarize()
.
By the way, dplyr
displays some messages when it’s loaded that we’ve been hiding so far. They’ll show up in red and start with:
Attaching package: 'dplyr'
The following objects are masked from 'package:stats':
This will occur in future exercises each time you load dplyr
: it’s mentioning some built-in functions that are overwritten by dplyr
. You won’t need to worry about this message within this course.
Use the median()
function within a summarize()
to find the median life expectancy. Save it into a column called medianLifeExp
.
library(gapminder)
library(dplyr)
# Summarize to find the median life expectancy
gapminder %>%
summarize(medianLifeExp = median(lifeExp))
## # A tibble: 1 x 1
## medianLifeExp
## <dbl>
## 1 60.7
Rather than summarizing the entire dataset, you may want to find the median life expectancy for only one particular year. In this case, you’ll find the median in the year 1957.
Filter for the year 1957, then use the median()
function within a summarize()
to calculate the median life expectancy into a column called medianLifeExp
.
library(gapminder)
library(dplyr)
# Filter for 1957 then summarize the median life expectancy
gapminder %>%
filter(year == 1957) %>%
summarize(medianLifeExp = median(lifeExp))
## # A tibble: 1 x 1
## medianLifeExp
## <dbl>
## 1 48.4
The summarize()
verb allows you to summarize multiple variables at once. In this case, you’ll use the median()
function to find the median life expectancy and the max()
function to find the maximum GDP per capita.
Find both the median life expectancy (lifeExp
) and the maximum GDP per capita (gdpPercap
) in the year 1957, calling them medianLifeExp
and maxGdpPercap
respectively. You can use the max()
function to find the maximum.
library(gapminder)
library(dplyr)
# Filter for 1957 then summarize the median life expectancy and the maximum GDP per capita
gapminder %>%
filter(year == 1957) %>%
summarize(medianLifeExp = median(lifeExp), maxGdpPercap = max(gdpPercap))
## # A tibble: 1 x 2
## medianLifeExp maxGdpPercap
## <dbl> <dbl>
## 1 48.4 113523.
In a previous exercise, you found the median life expectancy and the maximum GDP per capita in the year 1957. Now, you’ll perform those two summaries within each year in the dataset, using the group_by
verb.
Find the median life expectancy (lifeExp
) and maximum GDP per capita (gdpPercap
) within each year, saving them into medianLifeExp
and maxGdpPercap
, respectively.
library(gapminder)
library(dplyr)
# Find median life expectancy and maximum GDP per capita in each year
gapminder %>%
group_by(year) %>%
summarize(medianLifeExp = median(lifeExp), maxGdpPercap = max(gdpPercap))
## # A tibble: 12 x 3
## year medianLifeExp maxGdpPercap
## <int> <dbl> <dbl>
## 1 1952 45.1 108382.
## 2 1957 48.4 113523.
## 3 1962 50.9 95458.
## 4 1967 53.8 80895.
## 5 1972 56.5 109348.
## 6 1977 59.7 59265.
## 7 1982 62.4 33693.
## 8 1987 65.8 31541.
## 9 1992 67.7 34933.
## 10 1997 69.4 41283.
## 11 2002 70.8 44684.
## 12 2007 71.9 49357.
You can group by any variable in your dataset to create a summary. Rather than comparing across time, you might be interested in comparing among continents. You’ll want to do that within one year of the dataset: let’s use 1957.
Filter the gapminder
data for the year 1957. Then find the median life expectancy (lifeExp
) and maximum GDP per capita (gdpPercap
) within each continent, saving them into medianLifeExp
and maxGdpPercap
, respectively.
library(gapminder)
library(dplyr)
# Find median life expectancy and maximum GDP per capita in each continent in 1957
gapminder %>%
filter(year == 1957) %>%
group_by(continent) %>%
summarize(medianLifeExp = median(lifeExp), maxGdpPercap = max(gdpPercap))
## # A tibble: 5 x 3
## continent medianLifeExp maxGdpPercap
## <fct> <dbl> <dbl>
## 1 Africa 40.6 5487.
## 2 Americas 56.1 14847.
## 3 Asia 48.3 113523.
## 4 Europe 67.6 17909.
## 5 Oceania 70.3 12247.
Instead of grouping just by year, or just by continent, you’ll now group by both continent and year to summarize within each.
Find the median life expectancy (lifeExp
) and maximum GDP per capita (gdpPercap
) within each combination of continent and year, saving them into medianLifeExp
and maxGdpPercap
, respectively.
library(gapminder)
library(dplyr)
# Find median life expectancy and maximum GDP per capita in each year/continent combination
gapminder %>%
group_by(continent, year) %>%
summarize(medianLifeExp = median(lifeExp), maxGdpPercap = max(gdpPercap))
## # A tibble: 60 x 4
## # Groups: continent [?]
## continent year medianLifeExp maxGdpPercap
## <fct> <int> <dbl> <dbl>
## 1 Africa 1952 38.8 4725.
## 2 Africa 1957 40.6 5487.
## 3 Africa 1962 42.6 6757.
## 4 Africa 1967 44.7 18773.
## 5 Africa 1972 47.0 21011.
## 6 Africa 1977 49.3 21951.
## 7 Africa 1982 50.8 17364.
## 8 Africa 1987 51.6 11864.
## 9 Africa 1992 52.4 13522.
## 10 Africa 1997 52.8 14723.
## # ... with 50 more rows
In the last chapter, you summarized the gapminder data to calculate the median life expectancy within each year. This code is provided for you, and is saved (with <-
) as the by_year
dataset.
Now you can use the ggplot2 package to turn this into a visualization of changing life expectancy over time.
Use the by_year
dataset to create a scatter plot showing the change of median life expectancy over time, with year
on the x-axis and medianLifeExp
on the y-axis. Be sure to add expand_limits(y = 0)
to make sure the plot’s y-axis includes zero.
library(gapminder)
library(dplyr)
library(ggplot2)
by_year <- gapminder %>%
group_by(year) %>%
summarize(medianLifeExp = median(lifeExp),
maxGdpPercap = max(gdpPercap))
# Create a scatter plot showing the change in medianLifeExp over time
ggplot(by_year, aes(x = year, y = medianLifeExp), geom_point(), expand_limits(y = 0))
In the last exercise you were able to see how the median life expectancy of countries changed over time. Now you’ll examine the median GDP per capita instead, and see how the trend differs among continents.
gdpPercap
) within each and putting it into a column called medianGdpPercap
. Use the assignment operator <-
to save this summarized data as by_year_continent
.medianGdpPercap
by continent over time. Use color to distinguish between continents, and be sure to add expand_limits(y = 0)
so that the y-axis starts at zero.library(gapminder)
library(dplyr)
library(ggplot2)
# Summarize medianGdpPercap within each continent within each year: by_year_continent
by_year_continent <- gapminder %>%
group_by(continent, year) %>%
summarize(medianGdpPercap = median(gdpPercap))
# Plot the change in medianGdpPercap in each continent over time
ggplot(by_year_continent, aes(x = year, y = medianGdpPercap,color = continent), geom_point(), expand_limits(y = 0))
In these exercises you’ve generally created plots that show change over time. But as another way of exploring your data visually, you can also use ggplot2 to plot summarized data to compare continents within a single year.
medianLifeExp
and medianGdpPercap
. Save this as by_continent_2007
.by_continent_2007
data to create a scatterplot comparing these summary statistics for continents in 2007, putting the median GDP per capita on the x-axis to the median life expectancy on the y-axis. Color the scatter plot by continent
. You don’t need to add expand_limits(y = 0)
for this plot.library(gapminder)
library(dplyr)
library(ggplot2)
# Summarize the median GDP and median life expectancy per continent in 2007
by_continent_2007 <- gapminder %>%
filter(year == 2007) %>%
group_by(continent) %>%
summarize(medianLifeExp = median(lifeExp), medianGdpPercap = median(gdpPercap))
# Use a scatter plot to compare the median GDP and median life expectancy
ggplot(by_continent_2007, aes(x = medianGdpPercap, y = medianLifeExp, color = continent)) + geom_point()
You’ve learned to create scatter plots with ggplot2. In this chapter you’ll learn to create line plots, bar plots, histograms, and boxplots. You’ll see how each plot needs different kinds of data manipulation to prepare for it, and understand the different roles of each of these plot types in data analysis.
A line plot is useful for visualizing trends over time. In this exercise, you’ll examine how the median GDP per capita has changed over time.
group_by()
and summarize()
to find the median GDP per capita within each year, calling the output column medianGdpPercap
. Use the assignment operator <-
to save it to a dataset called by_year
.by_year
dataset to create a line plot showing the change in median GDP per capita over time. Be sure to use expand_limits(y = 0)
to include 0 on the y-axis.library(gapminder)
library(dplyr)
library(ggplot2)
# Summarize the median gdpPercap by year, then save it as by_year
by_year <- gapminder %>%
group_by(year) %>%
summarize(medianGdpPercap = median(gdpPercap))
# Create a line plot showing the change in medianGdpPercap over time
ggplot(by_year, aes(x = year, y = medianGdpPercap)) + geom_line() + expand_limits(y = 0)
In the last exercise you used a line plot to visualize the increase in median GDP per capita over time. Now you’ll examine the change within each continent.
group_by()
and summarize()
to find the median GDP per capita within each year and continent, calling the output column medianGdpPercap
. Use the assignment operator <-
to save it to a dataset called by_year_continent
.by_year_continent
dataset to create a line plot showing the change in median GDP per capita over time, with color representing continent. Be sure to use expand_limits(y = 0)
to include 0 on the y-axis.library(gapminder)
library(dplyr)
library(ggplot2)
# Summarize the median gdpPercap by year & continent, save as by_year_continent
by_year_continent <- gapminder %>%
group_by(year, continent) %>%
summarize(medianGdpPercap = median(gdpPercap))
# Create a line plot showing the change in medianGdpPercap by continent over time
ggplot(by_year_continent, aes(x = year, y = medianGdpPercap, color = continent)) + geom_line() + expand_limits(y = 0)
A bar plot is useful for visualizing summary statistics, such as the median GDP in each continent.
group_by()
and summarize()
to find the median GDP per capita within each continent in the year 1952, calling the output column medianGdpPercap
. Use the assignment operator <-
to save it to a dataset called by_continent
.by_continent
dataset to create a bar plot showing the median GDP per capita in each continent.library(gapminder)
library(dplyr)
library(ggplot2)
# Summarize the median gdpPercap by year and continent in 1952
by_continent <- gapminder %>%
group_by(continent) %>%
filter(year == 1952) %>%
summarize(medianGdpPercap = median(gdpPercap))
# Create a bar plot showing medianGdp by continent
ggplot(by_continent, aes(x = continent, y = medianGdpPercap)) + geom_col()
You’ve created a plot where each bar represents one continent, showing the median GDP per capita for each. But the x-axis of the bar plot doesn’t have to be the continent: you can instead create a bar plot where each bar represents a country.
In this exercise, you’ll create a bar plot comparing the GDP per capita between the two countries in the Oceania continent (Australia and New Zealand).
oceania_1952
.oceania_1952
dataset to create a bar plot, with country on the x-axis and gdpPercap
on the y-axis.library(gapminder)
library(dplyr)
library(ggplot2)
# Filter for observations in the Oceania continent in 1952
oceania_1952 <- gapminder %>%
filter(year == 1952, continent == "Oceania")
# Create a bar plot of gdpPercap by country
ggplot(oceania_1952, aes(x = country, y = gdpPercap)) + geom_col()
A histogram is useful for examining the distribution of a numeric variable. In this exercise, you’ll create a histogram showing the distribution of country populations in the year 1952.
Use the gapminder_1952
dataset (code for generating that dataset is provided) to create a histogram of country population (pop
) in the year 1952.
library(gapminder)
library(dplyr)
library(ggplot2)
gapminder_1952 <- gapminder %>%
filter(year == 1952)
# Create a histogram of population (pop)
ggplot(gapminder_1952, aes(x = pop)) + geom_histogram()
## `stat_bin()` using `bins = 30`. Pick better value with `binwidth`.
In the last exercise you created a histogram of populations across countries. You might have noticed that there were several countries with a much higher population than others, which causes the distribution to be very skewed, with most of the distribution crammed into a small part of the graph. (Consider that it’s hard to tell the median or the minimum population from that histogram).
To make the histogram more informative, you can try putting the x-axis on a log scale.
Use the gapminder_1952
dataset (code is provided) to create a histogram of country population (pop
) in the year 1952, putting the x-axis on a log scale with scale_x_log10()
.
library(gapminder)
library(dplyr)
library(ggplot2)
gapminder_1952 <- gapminder %>%
filter(year == 1952)
# Create a histogram of population (pop), with x on a log scale
ggplot(gapminder_1952, aes(x = pop)) + geom_histogram() + scale_x_log10()
## `stat_bin()` using `bins = 30`. Pick better value with `binwidth`.
A boxplot is useful for comparing a distribution of values across several groups. In this exercise, you’ll examine the distribution of GDP per capita by continent. Since GDP per capita varies across several orders of magnitude, you’ll need to put the y-axis on a log scale.
Use the gapminder_1952
dataset (code is provided) to create a boxplot comparing GDP per capita (gdpPercap
) among continents. Put the y-axis on a log scale with scale_y_log10()
.
library(gapminder)
library(dplyr)
library(ggplot2)
gapminder_1952 <- gapminder %>%
filter(year == 1952)
# Create a boxplot comparing gdpPercap among continents
ggplot(gapminder_1952, aes(x = continent, y = gdpPercap)) + geom_boxplot() + scale_y_log10()
There are many other options for customizing a ggplot2
graph, which you can learn about in other DataCamp courses. You can also learn about them from online resources, which is an important skill to develop.
As the final exercise in this course, you’ll practice looking up ggplot2
instructions by completing a task we haven’t shown you how to do.
Add a title to the graph: Comparing GDP per capita across continents. Use a search engine, such as Google or Bing, to learn how to do so.
library(gapminder)
library(dplyr)
library(ggplot2)
gapminder_1952 <- gapminder %>%
filter(year == 1952)
# Add a title to this graph: "Comparing GDP per capita across continents"
ggplot(gapminder_1952, aes(x = continent, y = gdpPercap)) +
geom_boxplot() +
scale_y_log10() + ggtitle("Comparing GDP per capita across continents")