I need to subset data frame based on column type - for example from data frame with 100 columns I need to keep only those column with type factor or integer. I've written a short function to do this, but is there any simpler solution or some built-in function or package on CRAN?

My current solution to get variable names with requested types:

varlist <- function(df=NULL, vartypes=NULL) {
  type_function <- c("is.factor","is.integer","is.numeric","is.character","is.double","is.logical")
  names(type_function) <- c("factor","integer","numeric","character","double","logical")
  names(df)[as.logical(sapply(lapply(names(df), function(y) sapply(type_function[names(type_function) %in% vartypes], function(x) do.call(x,list(df[[y]])))),sum))]  

The function varlist works as follows:

  1. For every requested type and for every column in data frame call "is.TYPE" function
  2. Sum tests for every variable (boolean is casted to integer automatically)
  3. Cast result to logical vector
  4. subset names in data frame

And some data to test it:

df <- read.table(file="http://archive.ics.uci.edu/ml/machine-learning-databases/statlog/german/german.data", sep=" ", header=FALSE, stringsAsFactors=TRUE)
names(df) <- c('ca_status','duration','credit_history','purpose','credit_amount','savings', 'present_employment_since','installment_rate_income','status_sex','other_debtors','present_residence_since','property','age','other_installment','housing','existing_credits', 'job','liable_maintenance_people','telephone','foreign_worker','gb')
df$gb <- ifelse(df$gb == 2, FALSE, TRUE)
df$property <- as.character(df$property)
varlist(df, c("integer","logical"))

I'm asking because my code looks really cryptic and hard to understand (even for me and I've finished the function 10 minutes ago).

  • 1
    I'm not sure I fully understand your question, but why not just something like df[sapply(df, function(x) is.integer(x) || is.logical(x))]? – A5C1D2H2I1M1N2O1R2T1 Jul 31 '13 at 7:52
  • I do this kind of subsetting frequently, that is why I've tried to create this function - to simplify my life. – Tomas Greif Jul 31 '13 at 8:09
  • 2
    Btw., why do you have to include downloading this rather big data.frame in your reproducible example? Next time you should just use one of the build-in datasets. – Roland Jul 31 '13 at 8:27
  • 1
    I would have used the iris dataset and made one of the numeric columns integer. I dislike downloading data for security reasons and it also isn't guaranteed that the data will be available for download in the future. – Roland Jul 31 '13 at 8:53
  • 1
    @TomasGreif, you can take any of them and add the code to convert to different types as part of your minimal example. – A5C1D2H2I1M1N2O1R2T1 Jul 31 '13 at 8:53
subset_colclasses <- function(DF, colclasses="numeric") {
  DF[,sapply(DF, function(vec, test) class(vec) %in% test, test=colclasses)]

str(subset_colclasses(df, c("factor", "integer")))

Just do the following:

df[,sapply(df,is.factor) | sapply(df,is.integer)]
  • how would I do something like df[,sapply(df,!is.list)] ???? (get all columns that are NOT list) – userJT Feb 10 '16 at 19:11
  • 1
    @userJT df[, sapply(df, function(x) !is.list(x))] – Thomas Feb 10 '16 at 19:32
  • I also found out in the meantime that this worked df2<-df[,!sapply(df,is.list)] – userJT Feb 10 '16 at 21:44
  • Is it possible to select continuous data (exclude integer)? – SoilSciGuy Aug 4 '16 at 19:51

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