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I was wondering if there was a built-in function in R that would compute the standard deviation for columns just like colMeans computes mean for every column. It would be simple enough to write my own mini function (a compound command that invokes things like apply with sd), but I was wondering if there was already something I could use whilst also keeping my code looking clean.

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marked as duplicate by flodel, John, Hong Ooi, Thomas, Eric Brown Aug 6 '13 at 6:59

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...there, I would especially recommend sgibb's colSdColMeans as a fast implementation. –  flodel Aug 5 '13 at 1:18
    
for a numeric matrix, easy enough (solutions below), but how about a solution for a dataframe that only works on numeric columns? Or uses a formula argument to select columns? colmean(~x1+x2+x3,data=d)? –  Spacedman Aug 5 '13 at 9:52

4 Answers 4

The general idea is to sweep the function across. You have many options, one is apply():

R> set.seed(42)
R> M <- matrix(rnorm(40),ncol=4)
R> apply(M, 2, sd)
[1] 0.835449 1.630584 1.156058 1.115269
R> 
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In apply(), the second argument, margin, "is a vector giving the subscripts which the function will be applied over." 2 indicates columns –  rafaelvalle Nov 28 at 3:11

Use colSds function from matrixStats library.

library(matrixStats)
set.seed(42)
M <- matrix(rnorm(40),ncol=4)
colSds(M)

[1] 0.8354488 1.6305844 1.1560580 1.1152688
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The package fBasics has a function colStdevs

 require('fBasics')
 set.seed(123)
 colStdevs(matrix(rnorm(1000, mean=10, sd=1), ncol=5))
[1] 0.9431599 0.9959210 0.9648052 1.0246366 1.0351268
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If you want to use it with groups, you can use:

library(plyr)
mydata<-mtcars
ddply(mydata,.(carb),colwise(sd))



  carb      mpg       cyl      disp       hp      drat        wt     qsec        vs        am      gear
1    1 6.001349 0.9759001  75.90037 19.78215 0.5548702 0.6214499 0.590867 0.0000000 0.5345225 0.5345225
2    2 5.472152 2.0655911 122.50499 43.96413 0.6782568 0.8269761 1.967069 0.5270463 0.5163978 0.7888106
3    3 1.053565 0.0000000   0.00000  0.00000 0.0000000 0.1835756 0.305505 0.0000000 0.0000000 0.0000000
4    4 3.911081 1.0327956 132.06337 62.94972 0.4575102 1.0536001 1.394937 0.4216370 0.4830459 0.6992059
5    6       NA        NA        NA       NA        NA        NA       NA        NA        NA        NA
6    8       NA        NA        NA       NA        NA        NA       NA        NA        NA        NA
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1  
...or without grouping: colwise(sd)(mydata) –  flodel Aug 5 '13 at 1:04

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