Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I have about 30 lines of code that do just this (getting Z scores):

data$z_col1 <- (data$col1 - mean(data$col1, na.rm = TRUE)) / sd(data$col1, na.rm = TRUE)
data$z_col2 <- (data$col2 - mean(data$col2, na.rm = TRUE)) / sd(data$col2, na.rm = TRUE)
data$z_col3 <- (data$col3 - mean(data$col3, na.rm = TRUE)) / sd(data$col3, na.rm = TRUE)
data$z_col4 <- (data$col4 - mean(data$col4, na.rm = TRUE)) / sd(data$col4, na.rm = TRUE)
data$z_col5 <- (data$col5 - mean(data$col5, na.rm = TRUE)) / sd(data$col5, na.rm = TRUE)

Is there some way, maybe using apply() or something, that I can just essentially do (python):

for col in ['col1', 'col2', 'col3']:
    data{col} = ... z score code here

Thanks R friends.

share|improve this question
You want to take a look at colMeans and this question. –  Thomas Jul 10 '13 at 20:45

2 Answers 2

I think you're right, apply() may be the way to go here.

For example:

data <- array(1:20, dim=c(4, 5))

data.zscores <- apply(data, 2, function(x)
    (x-mean(x, na.rm = TRUE))/sd(x, na.rm = TRUE))

The function apply() takes a matrix or array as it's first argument. The "2" refers to the dimension the function is iterated over - which in our case is columns. If we wanted to do it by row, we'd go with "1". Lastly, we have the function we want to apply to each column. See ?apply for more details.

share|improve this answer

A data.frame is a list, thus you can use lapply. Don't use apply on a data.frame as this will coerce to a matrix.

lapply(data, function(x) (x - mean(x,na.rm = TRUE))/sd(x, na.rm = TRUE))

Or you could use scale which performs this calculation on a vector.

lapply(data, scale)

You can translate the python style approach directy

for(col in names(data)){
   data[[col]] <- scale(data[[col]])

Note that this approach is not memory efficient in R as [[<.data.frame copies the entire data.frame each time.

share|improve this answer
Using lapply returned a list so to get back a data frame: data.frame(lapply(data, scale)) –  Lem Lordje Ko Sep 5 '14 at 9:12

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.