# Problem with aesthetics in ggplot2

I am trying to do some analysis of the recent MLB draft with some ggplots in R

``````selection <- draft[c("Team","Division","Position")]

Team   Division Position
1  pit NL Central        P
2  sea AL West           P
3  ari NL West           P
4  bal AL East           P
5  kc  AL Central        O
6  was NL East           I
``````

where P = Pitcher , O=Outfield etc.

I want to show the number of players selected by team by position within each division

``````p <- ggplot(data=selection, aes(x=Team, fill= Position))  + geom_bar(position="stack")
p <-  p + coord_flip()
p <- p+ ylab("Players Selected")
p <- p + facet_wrap(~Division)
p
``````

This gets me part of the way there but is very unattractive

a) the groupings work but all teams are shown in each divison grid - even though only the 5 or 6 team in each division actually - and correctly - show data

b) With the co-ord flip, the teams are listed in reverse alphabetical order down page. can I resort. It would also be nice to have left justification

c) How do i set the legend to Pitching, Outfield rather than P and O - is this a vector i somehow need to set and include

d) It would also be interesting to see the proportion of each teams selection committed to each type of player. This is accomplished by setting position= "fill". Can i set the axes to % rather than 0 to 1. I also tried setting a geom_vline(aes(xintercept=0.5) -and yintercept in case the flip factored in - but the line did not appear at halfway mark along the x axis

Help much appreciated

-
If your goal is to just flip the factors, you can use `reorder(Team, -as.numeric(Team))` in your ggplot2 aes call to `x=`. –  Brandon Bertelsen Aug 5 '11 at 21:49

edit: complete revamping, including info from other answer, after grabbing the data (and storing it in a text file called `mlbtmp.txt`) and some more experimentation:

``````selection <- read.table("mlbtmp.txt",skip=1)
names(selection) <- c("row","League","Division","Position","Team")
## arrange order/recode factors
selection <- transform(selection,
Team=factor(Team,levels=rev(levels(Team))),
Position=factor(Position,levels=c("P","I","C","O"),
labels=c("Pitching","Infield",
"Center","Outfield")))
``````

I played around with various permutations of `facet_grid`, `facet_wrap`, `scales`, `coord_flip`, etc.. Some worked as expected, some didn't:

``````library(ggplot2)
p <- ggplot(data=selection, aes(x=Team, fill= Position))  +
geom_bar(position="stack")
p + facet_grid(.~Division,scales="free_x") + coord_flip()  ## OK

## seems to fail with either "free_x" or "free_y"
p + facet_grid(Division~.,scales="free") + coord_flip()

## works but does not preserve 'count' axis:
p + facet_wrap(~Division,scales="free")
``````

I ended up with `facet_wrap(...,scales="free")` and used `ylim` to constrain the axes.

``````p + facet_wrap(~Division,scales="free") + coord_flip() +
ylim(0,60) + opts(axis.text.y=theme_text(hjust=0))
``````

In principle there might be a way to use `..density..`, `..ncount..`, `..ndensity..`, or one of the other statistics computed by `stat_bin` instead of the default `..count..`, but I couldn't find a combination that worked.

Instead (as is often the best solution when stuck with ggplot's on-the-fly transformations) I reshaped the data myself:

``````## pull out Team identification within Division and League
stab <- unique(subset(selection,select=c(Team,Division,League)))
## compute proportions by team
s2 <- melt(ddply(selection,"Team",function(x) with(x,table(Position)/nrow(x))))
## fix names
s2 <- rename(s2,c(variable="Position",value="proportion"))
## merge Division/League info back to summarized data
s3 <- merge(s2,stab)

p2 <- ggplot(data=s3, aes(x=Team, fill= Position,y=proportion))  +
geom_bar(position="stack")+scale_y_continuous(formatter="percent")+
geom_hline(yintercept=0.5,linetype=3)+ facet_wrap(~Division,scales="free") +
opts(axis.text.y=theme_text(hjust=0))+coord_flip()
``````

There's obviously a little more prettying-up that could be done here, but this should get you most of the way there ...

-
a) Shows correct data but the Team axis just shows the five teams for the first Division –  pssguy Jun 9 '11 at 19:57
b&c look good. Thanks a lot –  pssguy Jun 9 '11 at 19:57
If you include a larger portion of your data using `dput()` it will be easier for us to help you. –  joran Jun 9 '11 at 19:59
Hmm. Can you post a possibly-small-but-sufficiently-complete subset of data (i.e., a reproducible example) either by using `dput` or by putting the data on the web somewhere and posting a URL? (I missed joran's comment which is basically identical) –  Ben Bolker Jun 9 '11 at 20:01
Not familiar with dput() but will try with assistance. Otherwise I can probably post some data on web –  pssguy Jun 10 '11 at 0:19

Filling in some gaps from @Ben Bolker's answer...

To order the teams differently, you'll need to store that column as a factor. There probably won't be a short, quick way to specify the order you want, since you most likely want to order the teams in each division separately. This means you'll need to order all teams such that each division subset remains properly ordered. Something like (this is schematic, not syntatically correct):

``````selection\$Team <- factor(selection\$Team,
levels=c( (AL East teams in desired order),
(AL Central teams in desire order), etc))
``````

Depending on what other stuff you have calculated there may be a quick way to specify that, or you might have to write them out by hand.

Axis text justification can be modified via

``````opts(axis.text.x=theme_text(hjust=1))
``````

Stepping back a bit, notice that with ggplot2 the solution is often found by modifying your data that is used to build the plot, not the plot itself. It's a different way of thinking about things, but handy once you get used to it.

-
looks good, but I don't think you actually need an ordered factor -- `ggplot` plots factors in the order of their levels, whether they are ordered or not ... (I'm not 100% sure of this, but a test would be fairly simple) –  Ben Bolker Jun 9 '11 at 19:59
@Ben Bolker - Correct! I'll edit to reflect... –  joran Jun 9 '11 at 20:08
Thanks for your insight Joran, particularly about modifying data –  pssguy Jun 13 '11 at 15:12