How to construct a single graph for two completely different variables in terms of scale?

I have this data set

``````df <- data.frame(year = seq(1970, 2015, by = 5),
staff = c(219, 231, 259, 352, 448, 427, 556, 555, 602, 622),
applications = c(5820, 7107, 6135, 16119, 19381, 36611, 54962, 45759, 40358, 458582))
``````

I want to perform the exploratory analysis and want to compare whether the staff strength is growing according to the applications received. I plotted a line graph using excel :

which isn't very meaningful. I've also taken the log of both variables which almost got the desired result but i wonder if the graphs with log are less explainable to non-mathematicians. Since i want to use these kind of graphs in a presentation to my managerial staff who don't know much of statistics or mathematics. My question is how to tackle this situation in order to draw a meaningful graph. I've a gut feeling that R might have a better solution(that is why i asked here ) than Excel but the problem is 'How'?

Any help will be highly appreciated.

• In `ggplot2`, you can use faceting with free_y. Commented Apr 6, 2016 at 17:39
• Are you sure the last number in total application isn't a mistake or typo? In your plot, you can put an alternate y-axis for "santioned" so that it is not compressed. You can compute the correlation. Commented Apr 6, 2016 at 17:53
• @fishtank .. It is not a mistake because online application system adopted in 2011 resulted in greater number of applications dramatically . Commented Apr 7, 2016 at 16:22

One recommendation would be to change your measure into some type of ratio metric. For example, `staff per applications`. In the following, I will use `staff per 1,000 applications`:

``````library(ggplot2)

df <- data.frame(year = seq(1970, 2015, by = 5),
staff = c(219, 231, 259, 352, 448, 427, 556, 555, 602, 622),
applications = c(5820, 7107, 6135, 16119, 19381, 36611, 54962, 45759, 40358, 458582))

ggplot(data = df, aes(x = year, y = staff / (applications / 1000))) +
geom_point(size = 3) +
geom_line() +
ggtitle("Staff per 1,000 Applications")
``````

We can achieve the same result without `ggplot2` with:

``````with(df,
plot(x = year, y = staff / (applications / 1000), type = "l", main = "Staff per 1,000 Applications") +
points(x = year, y = staff / (applications / 1000), pch = 21, cex = 2, bg = "black")
)
``````

Alternatively, you could make your dataset a little more tidy (see this, this, and/or this for more information) and plot them two facets with `free_y` scales:

``````library(tidyr)

df_tidy <- gather(df, measure, value, -year)

ggplot(data = df_tidy, aes(x = year, y = value)) +
geom_point(size = 3) +
geom_line() +
facet_grid(measure ~ ., scales = "free_y")
``````

I would suggest you to use `facet_grid` with `scales = "free_y"`.

``````ggplot(reshape2::melt(df, 1), aes(year, value)) +
geom_line() + geom_point() +
facet_grid(variable ~ ., scales = 'free_y')
``````

The output you will get is,

``````    we can use this process:

library(ggplot2)
library(reshape2)
ggplot(df, aes(year)) +
geom_line(aes(y = staff, colour = "staff")) +
geom_line(aes(y = applications, colour = "applications"))

df <- data.frame(year = seq(1970, 2015, by = 5),
staff = c(219, 231, 259, 352, 448, 427, 556, 555, 602, 622),
applications = c(5820, 7107, 6135, 16119, 19381, 36611, 54962, 45759, 40358, 458582)
``````