I have a dataset with 498 variables of various kinds numeric, logical, date and others and I have this as a data frame in R with rows for observations and columns for variables. There is a certain subset of these variables for which I would like to replace their missing values with the mean for that variable.
I have coded this very simple function for mean imputation:
impute.mean <- function(x) replace(x, is.na(x), mean(x, na.rm = TRUE))
And this works beautifully if I apply to an individual variable say dataset$variableA:
dataset$variableA <- impute.mean(dataset$variableA)
And doing that gives me exactly what I want for the one variable, but because I have a fairly large subset of variables for which I need to do this, I would not want to do this manually by going through each variable that needs imputation.
My first instinct was to use one of the apply functions in R to do this efficiently, however I don't seem to understand how to do this exactly.
A rough first attempt was to use the standard apply:
newdataset <- apply(dataset, 2, impute.mean)
This is obviously a bit crude since it tries to apply the function to all columns including variables which are not numeric, however it seemed like a reasonable starting place even if it might generate a number of warnings. Alas, this method did not work and all my variables remain the same.
I have also done some experimenting with lapply, mapply, ddply but without any success so far.
Ideally, I would like to be able to do something like this:
relevantVariables <- c("variableA1", "variableA2", ..., "variableA293") newdataset <- magical.apply(dataset, relevantVariables, impute.mean)
Is there some apply function that works in this manner?
Alternatively, is there some other efficient way of going about this?