# How can an line be overlaid on a a bar plot using ggplot2?

I'm looking for a way to plot a bar chart containing two different series, hide the bars for one of the series and instead have a line (smooth if possible) go through the top of where bars for the hidden series would have been (similar to how one might overlay a freq polynomial on a histogram). I've tried the example below but appear to be running into two problems. First, I need to summarize (total) the data by group, and second, I' like to convert one of the series (df2) to a line.

``````df <- data.frame(grp=c("A","A","B","B","C","C"),val=c(1,1,2,2,3,3))
df2 <- data.frame(grp=c("A","A","B","B","C","C"),val=c(1,4,3,5,1,2))
ggplot(df, aes(x=grp, y=val)) +
geom_bar(stat="identity", alpha=0.75) +
geom_bar(data=df2, aes(x=grp, y=val), stat="identity", position="dodge")
``````
-

Perhaps your sample data aren't representative of the real data you are working with, but there are no lines to be drawn for `df2`. There is only one value for each x and y value. Here's a modifed version of your `df2` with enough data points to construct lines:

``````df <- data.frame(grp=c("A","A","B","B","C","C"),val=c(1,2,3,1,2,3))
df2 <- data.frame(grp=c("A","A","B","B","C","C"),val=c(1,4,3,5,0,2))

p <- ggplot(df, aes(x=grp, y=val))
p <- p + geom_bar(stat="identity", alpha=0.75)

p + geom_line(data=df2, aes(x=grp, y=val), colour="blue")
``````

Alternatively, if your example data above is correct, you can plot this information as a point with `geom_point(data = df2, aes(x = grp, y = val), colour = "red", size = 6)`. You can obviously change the color and size to your liking.

EDIT: In response to comment

I'm not entirely sure what the visual for a freq polynomial over a histogram is supposed to look like. Are the x-values supposed to be connected to one another? Secondly, you keep referring to wanting lines but your code shows `geom_bar()` which I assume isn't what you want? If you want lines, use `geom_lines()`. If the two assumptions above are correct, then here's an approach to do that:

`````` #First let's summarise df2 by group
df3 <- ddply(df2, .(grp), summarise, total = sum(val))
>  df3
grp total
1   A     5
2   B     8
3   C     3

#Second, let's plot df3 as a line while treating the grp variable as numeric

p <- ggplot(df, aes(x=grp, y=val))
p <- p + geom_bar(alpha=0.75, stat = "identity")
p + geom_line(data=df3, aes(x=as.numeric(grp), y=total), colour = "red")
``````
-
Actually, I'm looking for a way to essentially plot a bar charts containing two different series, hide one of the bars and instead have a line (smooth if possible) go through the top of where bars for the hidden series would have been (similar to how one might overlay a freq polynomial on a histogram). –  user338714 Dec 2 '10 at 13:49
I clarified the original question. Thanks for your help so far--it looks like I am missing a step to first summarize the data. –  user338714 Dec 2 '10 at 14:02
@user338714 - updated response, I'm still a little unclear what you are really after here. If what you want isn't above, can you find an example of the final image you would like to have? –  Chase Dec 2 '10 at 14:49
This is exactly what I was looking for! Thanks. –  user338714 Dec 2 '10 at 15:39
thanks a lot. I was stuck for a hour combining both bar and line plots.. –  Arun Raja Jan 9 at 7:57

You can get group totals in many ways. One of them is

``````with(df, tapply(val, grp, sum))
``````

For simplicity, you can combine bar and line data into a single dataset.

``````df_all <- data.frame(grp = factor(levels(df\$grp)))
df_all\$bar_heights <- with(df, tapply(val, grp, sum))
df_all\$line_y <- with(df2, tapply(val, grp, sum))
``````

Bar charts use a categorical x-axis. To overlay a line you will need to convert the axis to be numeric.

``````ggplot(df_all) +
geom_bar(aes(x = grp, weight = bar_heights)) +
geom_line(aes(x = as.numeric(grp), y = line_y))
``````

-
Nice answer (+1) ! I like this approach. I guess it depends on where the original source data is coming from as to which will require less coding. –  Chase Dec 2 '10 at 18:59