# ddply multiple quantiles by group

how can I do this calculation:

``````library(ddply)
quantile(baseball\$ab)
0%  25%  50%  75% 100%
0   25  131  435  705
``````

by groups, say by "team"? I want a data.frame with rownames "team" and column names "0% 25% 50% 75% 100%", i.e. one `quantile` call per group.

doing

``````ddply(baseball,"team",quantile(ab))
``````

is not the correct solution. my problem is that the OUTPUT of each grouped operation is a vector of length 5 here.

in other words, what's a neat solution to this (nevermind the header):

``````m=data.frame()
for (i in unique(baseball\$team)){m=rbind(m,quantile(baseball[baseball\$team==i, ]\$ab))}
X120 X120.1 X120.2 X120.3 X120.4
1  120  120.0  120.0 120.00    120
2  162  162.0  162.0 162.00    162
3   89   89.0   89.0  89.00     89
``````
-

With base `R` you could use `tapply` and `do.call`

``````library(plyr)
do.call("rbind", tapply(baseball\$ab, baseball\$team, quantile))

do.call("rbind", tapply(baseball\$ab, baseball\$team, quantile, c(0.05, 0.1, 0.2)))
``````

Or, with `ddply`

``````ddply(baseball, .(team), function(x) quantile(x\$ab))
``````
-
That's the right answer! (i just messed up the definition of the anonymous function). thanks! – Florian Oswald Mar 14 '14 at 16:11
Yep. I knew that there was an easier way, but could not figure it out. Very nice solution. – Mikko Mar 14 '14 at 18:33

You should define the calculation for each quantile separately and use `summarise`. Also use `.(team)`.

``````library(plyr)
data(baseball)
ddply(baseball,.(team),summarise, X0 = quantile(ab, probs = 0), X25 = quantile(ab, probs = 0.25), X50 = quantile(ab, probs = 0.50), X75 = quantile(ab, probs = 0.75), X100 = quantile(ab, probs = 1))
``````
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thanks. (that's a lot of typing.) – Florian Oswald Mar 14 '14 at 12:05