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I am working in R, trying to use the colwise(function, is.numeric) command in ddply and I cannot get it to work for specific quantiles. I would like the 25th quantile, but when you are doing this function over multiple numeric columns, I cannot get it to work.

Here is the example I am working with:

d <- data.frame(groups=c(rep("A",4), rep("B",4), rep("C",4)),
        otu1 = runif(12, min=0, max=100),
        otu2 = runif(12, min=0, max=100),
        otu3 = runif(12, min=0, max=100)
        )

I can get other summary functions to work:

library(plyr)
medians<-ddply(data, c("groups"), colwise(median, is.numeric))

However, the quantile function gives me all 5 options, and I cannot figure out how to use colwise with is.numeric when I am defining a specific quantile:

highq<-ddply(data, c("groups"), colwise(quantile, is.numeric))  #works but does not give you a specific quantile
highq<-ddply(data, c("groups"), colwise(quantile(is.numeric, probs=0.75), is.numeric))  #does not work

I have tried multiple iterations, and have failed. Any help is appreciated!

  • Do you need to use as.numeric?. Is numeric will just return a TRUE/FALSE value. – 42- Jan 2 '16 at 20:05
  • is.numeric works in colwise--this way, it does the function across all numeric columns. In my larger dataset, I usually have other categorical columns (such as the 'group' column) that are skipped by using is.numeric. – Anna Jan 2 '16 at 20:42
  • Got it. Didn't understand that colwise's second argument was a logical vector that restricted its effect. – 42- Jan 2 '16 at 22:09
3

We could try with data.table

library(data.table)
setDT(d)[,lapply(.SD, quantile, probs=0.75) , groups]

Or using dplyr

library(dplyr)
d %>%
  group_by(groups) %>% 
  summarise_each(funs(quantile(., probs=0.75)))

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