# Order Bars in ggplot2 bar graph

I am trying to make a bar graph where the largest bar would be nearest to the y axis and the shortest bar would be furthest. So this is kind of like the Table I have

``````    Name   Position
1   James  Goalkeeper
2   Frank  Goalkeeper
3   Jean   Defense
4   Steve  Defense
5   John   Defense
6   Tim    Striker
``````

So I am trying to build a bar graph that would show the number of players according to position

``````p <- ggplot(theTable, aes(x = Position)) + geom_bar(binwidth = 1)
``````

but the graph shows the goalkeeper bar first then the defense, and finally the striker one. I would want the graph to be ordered so that the defense bar is closest to the y axis, the goalkeeper one, and finally the striker one. Thanks

• can't ggplot reorder them for you without having to mess around with the table (or dataframe)? – Matt O'Brien Mar 23 '14 at 6:42

The key with ordering is to set the levels of the factor in the order you want. An ordered factor is not required; the extra information in an ordered factor isn't necessary and if these data are being used in any statistical model, the wrong parametrisation might result — polynomial contrasts aren't right for nominal data such as this.

``````## set the levels in order we want
theTable <- within(theTable,
Position <- factor(Position,
levels=names(sort(table(Position),
decreasing=TRUE))))
## plot
ggplot(theTable,aes(x=Position))+geom_bar(binwidth=1)
`````` In the most general sense, we simply need to set the factor levels to be in the desired order. If left unspecified, the levels of a factor will be sorted alphabetically. You can also specify the level order within the call to factor as above, and other ways are possible as well.

``````theTable\$Position <- factor(theTable\$Position, levels = c(...))
``````
• @Gavin: 2 simplifications: since you already are using `within`, there's no need to use `theTable\$Position`, and you could just do `sort(-table(...))` for decreasing order. – Prasad Chalasani Mar 6 '11 at 15:16
• @Prasad the former was a leftover from testing so thanks for pointing that out. As far the latter, I prefer explicitly asking for the reversed sort than the `-` you use as it is far easier to get the intention from `decreasing = TRUE` than noticing the `-` in all the rest of the code. – Reinstate Monica - G. Simpson Mar 6 '11 at 15:22
• @GavinSimpson; I think the part about `levels(theTable\$Position) <- c(...)` leads to undesired behaviour where the actual entries of the data frame gets reordered, and not just the levels of the factor. See this question. Maybe you should modify or remove those lines? – Anton Feb 18 at 11:56
• Strongly agree with Anton. I just saw this question and went poking around on where they got the bad advice to use `levels<-`. I'm going to edit that part out, at least tentatively. – Gregor Feb 18 at 23:03
• @Anton Thanks for the suggestion (and to Gregor for the edit); I would never do this via `levels<-()` today. This is something from from 8 years back and I can't recall if things were different back then or whether I was just plain wrong, but regardless, it is wrong and should be erased! Thanks! – Reinstate Monica - G. Simpson Feb 19 at 4:09

@GavinSimpson: `reorder` is a powerful and effective solution for this:

``````ggplot(theTable,
aes(x=reorder(Position,Position,
function(x)-length(x)))) +
geom_bar()
``````
• Indeed +1, and especially in this case where there is a logical order that we can exploit numerically. If we consider arbitrary ordering of categories and we don't want alphabetical then it is just as easy (easier?) to specify the levels directly as shown. – Reinstate Monica - G. Simpson Jun 14 '12 at 10:05
• This is the neatest. Nullify the need to modify original dataframe – T.Fung Aug 8 at 16:44

Using `scale_x_discrete (limits = ...)` to specify the order of bars.

``````positions <- c("Goalkeeper", "Defense", "Striker")
p <- ggplot(theTable, aes(x = Position)) + scale_x_discrete(limits = positions)
``````
• Your solution is the most suitable to my situation, as I want to program to plot with x being an arbitrary column expressed by a variable in a data.frame. The other suggestions would be harder to express the arrangement of the order of x by an expression involving the variable. Thanks! If there is interest, I can share my solution using your suggestion. Just one more issue, adding scale_x_discrete(limits = ...), I found that there is blank space as wide as the bar-chart, on the right of the chart. How can I get rid of the blank space? As it does not serve any purpose. – Yu Shen Apr 28 '15 at 1:04
• This seems necessary for ordering histogram bars – geotheory Aug 4 '15 at 9:50
• QIBIN: Wow...the other answers here work, but your answer by far seems not just the most concise and elegant, but the most obvious when thinking from within ggplot's framework. Thank you. – Dan Nguyen Sep 10 '15 at 13:53
• When I tried this solution, on my data it, didn't graph NAs. Is there a way to use this solution and have it graph NAs? – user2460499 May 25 '17 at 18:13
• This is an elegant and simple solution - thank you!! – Kalif Vaughn Nov 6 '18 at 17:00

I think the already provided solutions are overly verbose. A more concise way to do a frequency sorted barplot with ggplot is

``````ggplot(theTable, aes(x=reorder(Position, -table(Position)[Position]))) + geom_bar()
``````

It's similar to what Alex Brown suggested, but a bit shorter and works without an anynymous function definition.

Update

I think my old solution was good at the time, but nowadays I'd rather use `forcats::fct_infreq` which is sorting factor levels by frequency:

``````require(forcats)

ggplot(theTable, aes(fct_infreq(Position))) + geom_bar()
``````
• I do not understand the second argument to reorder function and what does it do. Can you kindly explain what is happening? – user3282777 Sep 20 '15 at 5:26
• @user3282777 have you tried the docs stat.ethz.ch/R-manual/R-devel/library/stats/html/… ? – Holger Brandl Sep 21 '15 at 6:42
• thanks for coming back and updating your answer! – Dan Apr 25 '18 at 19:13
• Great solution! Good to see others employing tidyverse solutions! – Mike Mar 11 at 14:18

Like `reorder()` in Alex Brown's answer, we could also use `forcats::fct_reorder()`. It will basically sort the factors specified in the 1st arg, according to the values in the 2nd arg after applying a specified function (default = median, which is what we use here as just have one value per factor level).

It is a shame that in the OP's question, the order required is also alphabetical as that is the default sort order when you create factors, so will hide what this function is actually doing. To make it more clear, I'll replace "Goalkeeper" with "Zoalkeeper".

``````library(tidyverse)
library(forcats)

theTable <- data.frame(
Name = c('James', 'Frank', 'Jean', 'Steve', 'John', 'Tim'),
Position = c('Zoalkeeper', 'Zoalkeeper', 'Defense',
'Defense', 'Defense', 'Striker'))

theTable %>%
count(Position) %>%
mutate(Position = fct_reorder(Position, n, .desc = TRUE)) %>%
ggplot(aes(x = Position, y = n)) + geom_bar(stat = 'identity')
`````` • IMHO best solution as forcats is as well as dplyr a tidyverse package. – c0bra Aug 27 '18 at 8:47

A simple dplyr based reordering of factors can solve this problem:

``````library(dplyr)

#reorder the table and reset the factor to that ordering
theTable %>%
group_by(Position) %>%                              # calculate the counts
summarize(counts = n()) %>%
arrange(-counts) %>%                                # sort by counts
mutate(Position = factor(Position, Position)) %>%   # reset factor
ggplot(aes(x=Position, y=counts)) +                 # plot
geom_bar(stat="identity")                         # plot histogram
``````

You just need to specify the `Position` column to be an ordered factor where the levels are ordered by their counts:

``````theTable <- transform( theTable,
Position = ordered(Position, levels = names( sort(-table(Position)))))
``````

(Note that the `table(Position)` produces a frequency-count of the `Position` column.)

Then your `ggplot` function will show the bars in decreasing order of count. I don't know if there's an option in `geom_bar` to do this without having to explicitly create an ordered factor.

• I didn't fully parse your code up there, but I'm pretty sure `reorder()` from the stats library accomplishes the same task. – Chase Mar 6 '11 at 13:44
• @Chase how do you propose using `reorder()` in this case? The factor requiring reordering needs to be reordered by some function of itself and I'm struggling to see a good way to do that. – Reinstate Monica - G. Simpson Mar 6 '11 at 14:23
• ok, `with(theTable, reorder(Position, as.character(Position), function(x) sum(duplicated(x))))` is one way, and another `with(theTable, reorder(Position, as.character(Position), function(x) as.numeric(table(x))))` but these are just as convoluted... – Reinstate Monica - G. Simpson Mar 6 '11 at 14:39
• I simplified the answer slightly to use `sort` rather than `order` – Prasad Chalasani Mar 6 '11 at 14:55
• @Gavin - perhaps I misunderstood Prasad's original code (I don't have R on this machine to test...) but it looked as if he was reordering the categories based on frequency, which `reorder` is adept at doing. I agree for this question that something more involved is needed. Sorry for the confusion. – Chase Mar 6 '11 at 15:45

In addition to forcats::fct_infreq, mentioned by @HolgerBrandl, there is forcats::fct_rev, which reverses the factor order.

``````theTable <- data.frame(
Position=
c("Zoalkeeper", "Zoalkeeper", "Defense",
"Defense", "Defense", "Striker"),
Name=c("James", "Frank","Jean",
"Steve","John", "Tim"))

p1 <- ggplot(theTable, aes(x = Position)) + geom_bar()
p2 <- ggplot(theTable, aes(x = fct_infreq(Position))) + geom_bar()
p3 <- ggplot(theTable, aes(x = fct_rev(fct_infreq(Position)))) + geom_bar()

gridExtra::grid.arrange(p1, p2, p3, nrow=3)
`````` • "fct_infreq(Position)" is the little thing that does so much, thanks!! – Paul Feb 25 at 18:26

I agree with zach that counting within dplyr is the best solution. I've found this to be the shortest version:

``````dplyr::count(theTable, Position) %>%
arrange(-n) %>%
mutate(Position = factor(Position, Position)) %>%
ggplot(aes(x=Position, y=n)) + geom_bar(stat="identity")
``````

This will also be significantly faster than reordering the factor levels beforehand since the count is done in dplyr not in ggplot or using `table`.

If the chart columns come from a numeric variable as in the dataframe below, you can use a simpler solution:

``````ggplot(df, aes(x = reorder(Colors, -Qty, sum), y = Qty))
+ geom_bar(stat = "identity")
``````

The minus sign before the sort variable (-Qty) controls the sort direction (ascending/descending)

Here's some data for testing:

``````df <- data.frame(Colors = c("Green","Yellow","Blue","Red","Yellow","Blue"),
Qty = c(7,4,5,1,3,6)
)

**Sample data:**
Colors Qty
1  Green   7
2 Yellow   4
3   Blue   5
4    Red   1
5 Yellow   3
6   Blue   6
``````

When I found this thread, that was the answer I was looking for. Hope it's useful for others.

Another alternative using reorder to order the levels of a factor. In ascending (n) or descending order (-n) based on the count. Very similar to the one using `fct_reorder` from the `forcats` package:

Descending order

``````df %>%
count(Position) %>%
ggplot(aes(x = reorder(Position, -n), y = n)) +
geom_bar(stat = 'identity') +
xlab("Position")
``````

Ascending order

``````df %>%
count(Position) %>%
ggplot(aes(x = reorder(Position, n), y = n)) +
geom_bar(stat = 'identity') +
xlab("Position")
`````` Data frame:

``````df <- structure(list(Position = structure(c(3L, 3L, 1L, 1L, 1L, 2L), .Label = c("Defense",
"Striker", "Zoalkeeper"), class = "factor"), Name = structure(c(2L,
1L, 3L, 5L, 4L, 6L), .Label = c("Frank", "James", "Jean", "John",
"Steve", "Tim"), class = "factor")), class = "data.frame", row.names = c(NA,
-6L))
``````

Since we are only looking at the distribution of a single variable ("Position") as opposed to looking at the relationship between two variables, then perhaps a histogram would be the more appropriate graph. ggplot has geom_histogram() that makes it easy:

``````ggplot(theTable, aes(x = Position)) + geom_histogram(stat="count")
`````` Using geom_histogram():

I think geom_histogram() is a little quirky as it treats continuous and discrete data differently.

For continuous data, you can just use geom_histogram() with no parameters. For example, if we add in a numeric vector "Score"...

``````    Name   Position   Score
1   James  Goalkeeper 10
2   Frank  Goalkeeper 20
3   Jean   Defense    10
4   Steve  Defense    10
5   John   Defense    20
6   Tim    Striker    50
``````

and use geom_histogram() on the "Score" variable...

``````ggplot(theTable, aes(x = Score)) + geom_histogram()
`````` For discrete data like "Position" we have to specify a calculated statistic computed by the aesthetic to give the y value for the height of the bars using `stat = "count"`:

`````` ggplot(theTable, aes(x = Position)) + geom_histogram(stat = "count")
``````

Note: Curiously and confusingly you can also use `stat = "count"` for continuous data as well and I think it provides a more aesthetically pleasing graph.

``````ggplot(theTable, aes(x = Score)) + geom_histogram(stat = "count")
`````` 