# Why does tapply take the subset as NA and not exclude them totally

I have a question. I want to make a barplot with the mean and errorbars, where it is grouped for two factors. To get the mean and the standard errors I used the function tapply.

However for one of the factor I want to drop one level.

So what I did was did:

``````dataFE <- data[-which(plant=="FS"),] # this works fine, I get exactly the data set I want without the FS level of the factor plant
``````

Then to get the mean and standard error I use this:

``````means <- with(dataFE, as.matrix(tapply(leaves, list(plant, Orchestia), mean), nrow=2)

e <- with(dataFE, as.matrix(tapply (leaves, list(plant, Orchestia), function(x) sd(x)/sqrt(length(x))), nrow=2))
``````

And there something strange happens, it does not calculate the FS, however it puts it in a table with NA:

``````    row.names   no          yes
1   F           7.009022    5.307185

2   FS          NA          NA

3   S           2.837139    2.111054
``````

This I don't want, cause if I use this in barplot2 (package gplots) then I will get an empty bar for the FS, whereas that one should not be there at all.

So does any of use have a solution or an other method to get a nice barplot :). Thanks any way!

-
Can you give us a snippet of your data? You can use `dput` for this. Without that, I'll just wager a guess: your column `plant` is a factor and while you have dropped the rows that have that value, the `"level" FS` still exists. Use `levels(data\$plant)` to see. You can then use `droplevels` to get rid of it. – Justin Jul 24 '12 at 14:12
@Justin: I'd recommend posting that as an answer. – David Robinson Jul 24 '12 at 14:44

Without a sample of your data, I'll just wager a guess:

your column plant is a factor. And while you have dropped the rows that have that value, the "level" `FS` still exists. Use `levels(data\$plant)` to see. You can then use `droplevels` to get rid of it.

``````dat <- data.frame(x=1:15, y=factor(letters[1:3]))

> levels(dat\$y)
[1] "a" "b" "c"

dat <- dat[dat\$y != 'a',]
> levels(dat\$y)
[1] "a" "b" "c"
>

> tapply(dat\$x, dat\$y, sum)
a  b  c
NA 40 45
>

> droplevels(dat\$y)
[1] b c b c b c b c b c
Levels: b c
> dat\$y <- droplevels(dat\$y)

> tapply(dat\$x, dat\$y, sum)
b  c
40 45
>
``````
-
I was going to answer dat\$y <- factor(dat\$y) and when I look at the code for droplevels.factor, I find that is exactly what it does. – 42- Jul 24 '12 at 23:38
Thanks for the answer, that works fine. – Marinka Jul 25 '12 at 9:47
If the answer works for you, please mark it as answered by clicking the check box in the upper left. That way others know that your question is answered. – Justin Jul 25 '12 at 14:09