Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have read in a large data file into R using the following command

data <- as.data.set(spss.system.file(paste(path, file, sep = '/')))

The data set contains columns which should not belong, and contain only blanks. This issue has to do with R creating new variables based on the variable labels attached to the SPSS file (Source).

Unfortunately, I have not been able to determine the options necessary to resolve the problem. I have tried all of: foreign::read.spss, memisc:spss.system.file, and Hemisc::spss.get, with no luck.

Instead, I would like to read in the entire data set (with ghost columns) and remove unnecessary variables manually. Since the ghost columns contain only blank spaces, I would like to remove any variables from my data.table where the number of unique observations is equal to one.

My data are large, so they are stored in data.table format. I would like to determine an easy way to check the number of unique observations in each column, and drop columns which contain only one unique observation.


### Create a data.table
dt <- data.table(a = 1:10,
                 b = letters[1:10],
                 c = rep(1, times = 10))

### Create a comparable data.frame
df <- data.frame(dt)

### Expected result

### Expected result

However, I wish to calculate the number of obs for a large data file, so referencing each column by name is not desired. I am not a fan of eval(parse()).

### I want to determine the number of unique obs in
  # each variable, for a large list of vars
lapply(names(df), function(x) {
    length(unique(df[, x]))

### Unexpected result
length(unique(dt[, 'a', with = F]))  # Returns 1

It seems to me the problem is that

dt[, 'a', with = F]

returns an object of class "data.table". It makes sense that the length of this object is 1, since it is a data.table containing 1 variable. We know that data.frames are really just lists of variables, and so in this case the length of the list is just 1.

Here's pseudo code for how I would remedy the solution, using the data.frame way:

for (x in names(data)) {
  unique.obs <- length(unique(data[, x]))
  if (unique.obs == 1) {
    data[, x] <- NULL

Any insight as to how I may more efficiently ask for the number of unique observations by column in a data.table would be much appreciated. Alternatively, if you can recommend how to drop observations if there is only one unique observation within a data.table would be even better.

share|improve this question

3 Answers 3

up vote 5 down vote accepted

If you want to find the number of unique values in each column, something like

 dt[, lapply(.SD, function(x) length(unique(x)))]
##     a  b c
## 1: 10 10 1

To get your function to work you need to use with=FALSE within [.data.table, or simply use [[ instead (read fortune(312) as well...)

lapply(names(df) function(x) length(unique(dt[, x, with = FALSE])))


 lapply(names(df) function(x) length(unique(dt[[x]])))

will work

In one step

dt[,names(dt) := lapply(.SD, function(x) if(length(unique(x)) ==1) {return(NULL)} else{return(x)})]

 # or to avoid calling `.SD` 

dt[, Filter(names(dt), f = function(x) length(unique(dt[[x]]))==1) := NULL]
share|improve this answer
+1 As I said, I had the feeling that I could simplify my approach...but I wouldn't have come up with your solution. Damn, this is neat... –  Christoph_J Apr 16 '13 at 2:54

The approaches in the other answers are good. Another way to add to the mix, just for fun :

for (i in names(DT)) if (length(unique(DT[[i]]))==1) DT[,(i):=NULL]

or if there may be duplicate column names :

for (i in ncol(DT):1) if (length(unique(DT[[i]]))==1) DT[,(i):=NULL]

NB: (i) on the LHS of := is a trick to use the value of i rather than a column named "i".

share|improve this answer

Here is a solution to your core problem (I hope I got it right).


### Create a data.table
dt <- data.table(a = 1:10,
                 b = letters[1:10],
                 d1 = "",
                 c = rep(1, times = 10),
                 d2 = "")
     a b d1 c d2
 1:  1 a    1   
 2:  2 b    1   
 3:  3 c    1   
 4:  4 d    1   
 5:  5 e    1   
 6:  6 f    1   
 7:  7 g    1   
 8:  8 h    1   
 9:  9 i    1   
10: 10 j    1   

First, I introduce two columns d1 and d2 that have no values whatsoever. Those you want to delete, right? If so, I just identify those columns and select all other columns in the dt.

only_space <- function(x) {
  length(unique(x))==1 && x[1]==""
bolCols <- apply(dt, 2, only_space)
dt[, (1:ncol(dt))[!bolCols], with=FALSE]

Somehow, I have the feeling that you could further simplify it...


     a b c
 1:  1 a 1
 2:  2 b 1
 3:  3 c 1
 4:  4 d 1
 5:  5 e 1
 6:  6 f 1
 7:  7 g 1
 8:  8 h 1
 9:  9 i 1
10: 10 j 1
share|improve this answer

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.