I'd like to use ggplot's
geom_boxplot and use my own data columns for the quantile segments, instead of those returned by
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)) + geom_boxplot(stat="identity")
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
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$method),FUN=quantile,probs=seq(0, 1, .25))
And I realize that there are no columns named
score.25%, etc. There is just the
score column with 5 values. So this boils down to: how do i access those 5 values within
I've found the issue with my dataset. As i mentioned in my edit, the columns
score.25%, etc didn't exist based on how i formed the data frame. For example, running
 "T" "method" "score"
It turns out that the
score column is a vector of values. Running
allquartile$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]  -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, aes(x=T, ymin=score[,1], lower=score[,2], middle=score[,3], upper=score[,4], ymax=score[,5], color=method)) + geom_boxplot(stat="identity")
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.