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I often need to filter out columns with a low variance from a data.table. The column names are not known in advance.

dt = data.table(mtcars)

# calculate standard deviation with arbitrary max value of 1:
mask = dt[,lapply(.SD, function(x) sd(x, na.rm = TRUE) > 1)]

# The columns with the FALSE values in row 1 need to be removed
mask.t = t(mask)
mask.t = which(mask.t)
dt[,mask.t,with=FALSE] 

The approach above is clunky. Is there a more elegant way to filter out columns out of a data.table for which the column statistic evaluates to TRUE?

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2  
dt[, names(mask)[unlist(mask)], with=FALSE] maybe? Or dt[, names(which(unlist(mask))), with=FALSE] –  Arun Mar 21 '14 at 17:22
    
Thanks Arun, they both work. It was the unlist part that I missed. –  Henk Mar 21 '14 at 17:28

1 Answer 1

up vote 1 down vote accepted

These work:

dt[, names(mask)[unlist(mask)], with=FALSE] 

dt[, names(which(unlist(mask))), with=FALSE]

All together now:

variance.filter = function(df) {
  mask = df[,lapply(.SD, function(x) sd(x,na.rm = TRUE) > 1)]
  df = df[, names(mask)[unlist(mask)], with=FALSE] 
}
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