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I'd like to use ggplot's geom_boxplot and use my own data columns for the quantile segments, instead of those returned by stat_boxplot.

The data, after doing some transformations, looks like this:

> allquartile                                                      
      T method       s.0%      s.25%      s.50%      s.75%     s.100%                                                                                                    
1     2    LDA -196.76273 -190.38842 -184.01411 -177.63979 -171.26548                                                                                                    
2     3    LDA -171.53987 -166.16923 -160.79859 -115.28652  -69.77446                                                                                                    
3     4    LDA -161.17590 -157.61372 -149.71026 -124.68926  -69.77446                                                                                                    
4     5    LDA -194.10553 -179.83165 -175.14337 -168.46104 -159.07206 

After doing a lot of searching and digging, I figured out that my plotting command should look like this:

p <- ggplot(allquartile,aes(x=T, ymin=`s.0%`, lower=`s.25%`,
                            middle=`s.50%`, upper=`s.75%`,
                            ymax=`s.100%`, color=method)) + 

This should use s.0% as the min, s.25% as the lower, etc etc. But when i try to display p, i get the following error:

Error in eval(expr, envir, enclos) : object 's.0%' not found                                                                                                             
Calls: print ... lapply -> is.vector -> lapply -> FUN -> eval -> eval

I've also tried using aes_string in place of aes, and I instead get this error:

Error in aes_string(x = T, ymin = `s.0%`, lower = `s.25%`, middle = `s.50%`,  :                                                                                            
object 's.0%' not found 

I'm fairly new to both R and ggplot2, so i'm not realy sure how to interpret this, but I'm assuming it's because of the . in s.0%.

I'd greatly appreciate any suggestions on how to get around this.

Edit: I've dug around more and I think this is due to my misunderstanding of the quantile method. I created allquartile by this command:

allquartile <-aggregate(list(s=topicquality$score), list(T=topicquality$T,method=topicquality$method),FUN=quantile,probs=seq(0, 1, .25)) 

And I realize that there are no columns named score.0%, score.25%, etc. There is just the score column with 5 values. So this boils down to: how do i access those 5 values within score?


I've found the issue with my dataset. As i mentioned in my edit, the columns score.0%, score.25%, etc didn't exist based on how i formed the data frame. For example, running colnames(allquartile) returned:

[1] "T"      "method" "score"

It turns out that the score column is a vector of values. Running allquartile$score gives me:

            0%       25%       50%       75%       100%
[1,] -196.7627 -190.3884 -184.0141 -177.6398 -171.26548
[2,] -171.5399 -166.1692 -160.7986 -115.2865  -69.77446
[3,] -161.1759 -157.6137 -149.7103 -124.6893  -69.77446
[4,] -194.1055 -179.8316 -175.1434 -168.4610 -159.07206
[5,] -200.1544 -174.2835 -167.7209 -145.3432 -129.54586

I can then access each individual quantile's values by doing

> allquartile$score[,1]
[1] -196.7627 -171.5399 -161.1759 -194.1055 -200.1544

I'm not familiar with R enough to know what kind of data structure this is, but I would call it a matrix. So like any good matrix object, m[,column] returns the values of the column while m[row,] returns the values of the row, and m[row, column] gets the cell value.

With that in mind, I've realized that the propper plotting command should be

p <- ggplot(allquartile,
                color=method)) + 

And this plots out everything perfectly.

Thanks to everyone for the good suggestions, even though they didn't fix the problem, they helped a lot in figuring things out.

share|improve this question
The . probably isn't a problem, but I'd bet the % is. Try reading ?make.names. – joran Oct 6 '11 at 17:47
I thought that was well, but I found an example where p <- ggplot(data,aes(x=.id, ymin=`5%`, lower=`25%`, middle=`50%`, upper=`75%`, ymax=`95%`)) + geom_boxplot(stat="identity") plotted someone else's data correctly. – fozziethebeat Oct 6 '11 at 18:02
Well, I was just trying to nudge you in the direction of trying a simple first pass at debugging: set the column names in allquartile to something absolutely safe (no symbols). – joran Oct 6 '11 at 18:06
ymax='s.1000%' may have an extra 0 and you seem to have a variety of ' and ` – Henry Oct 6 '11 at 18:17
@Henry : Whoops, that's a typo for sure, but the problem still persists. also, everything around the s.x% names are be backtics – fozziethebeat Oct 6 '11 at 18:24
up vote 0 down vote accepted

Actually, based on your edits, I think your real problem is that you shouldn't have been using aggregate. If the function you are applying returns multiple values (like quantile), aggregate returns the results in the somewhat inconvenient format you observed, by default.

What's happening is this. A data frame, somewhat confusingly, is actually a list, with each column being an element of the list. The only requirement being that each 'column' has the same number of rows. So you're getting a data frame back with three 'columns': the third column is a just a matrix!

Doing this with aggregate is possible, but there are more convenient tools out there. (For instance, you could call cbind(allquartile[,1:2],allquartile[,3]) to create a data frame of the 'correct' dimensions.)

For example, a very popular one is ddply from the plyr package. Here's an example using some made up data, but following the general structure of your data:

topicquality <- data.frame(score = runif(20),
                            T = rep(letters[1:2],each = 10),
                            method = rep(letters[3:4],length.out = 20))

ddply(topicquality,.(T,method),FUN = function(x,...){quantile(x$score,...)},probs = seq(0,1,0.25))

You'll note that this will return a data frame of the dimensions you expect, but you still have to deal with the inconvenient column names. That's best dealt with in the function you apply to each piece:

myQuantile <- function(x,...){
    tmp <- quantile(x,...)
    names(tmp) <- NULL #Or something else convenient
ddply(topicquality,.(T,method),FUN = myQuantile,probs = seq(0,1,0.25))
share|improve this answer
That makes a lot of sense. I'm simply using aggregate since that's what was already written by someone else to plot simpler things like the mean, median, and max. I managed to get things to work as stated above with aggregate and matrix operations, but I'll try giving this a spin. I do find it pretty whacky that my third 'column' is a matrix. – fozziethebeat Oct 7 '11 at 16:26

Here is how to solve it. The issue is with your column names. If you type names(allquartile), you will notice that your column names are s.0., s.25. etc. My recommendation would to be avoid all punctuations in column names save for _ or ..

names(allquartile) = str_replace_all(names(allquartile), "\\.", '')
p <- ggplot(allquartile2, aes_string(x = "T", ymin = "s0", lower = "s25", 
      middle = "s50", upper = "s75", ymax = "s100", color = "method")) + 
     geom_boxplot(stat = "identity")
share|improve this answer

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