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The problem:

I often need to select a set of variables from a data.frame in R. My research is in the social and behavioural sciences, and it is quite common to have a data.frame with several hundreds of variables (e.g., there'll be item level information for a range of survey questions, demographic items, performance measures, etc., etc.).

As part of analyses, I'll often want to select a subset of variables. For example, I might want get:

  • descriptive statistics for a set of variables
  • correlation matrix on a set of variables
  • factor analysis on a set of variables
  • predictors in a linear model

Now, I know that there are many ways to write the code to select a subset of variables. Quick-r has a nice overview of common ways of extracting variable subsets from a data.frame.


myvars <- c("v1", "v2", "v3")
newdata <- mydata[myvars]

However, I'm interested in the efficiency of this process, particularly where you might need to extract 20 or so variables from a data.frame. The naming convention of variables is often not intuitive, especially where you've inherited a dataset from someone else, so you might be left wondering, was the variable Gender, gender, sex, GENDER, gender1, etc. Multiply this by 20 variables that need to be extracted, and the task of memorising variable names becomes more complicated than it needs to be.

Concrete example

To make the following discussion concrete, I'll use the bfi data.frame in the psych package.

df <- bfi
head(df, 1)
      A1 A2 A3 A4 A5 C1 C2 C3 C4 C5 E1 E2 E3 E4 E5 N1 N2 N3 N4 N5 O1 O2 O3 O4
61617  2  4  3  4  4  2  3  3  4  4  3  3  3  4  4  3  4  2  2  3  3  6  3  4
      O5 gender education age
61617  3      1        NA  16
  • How can I efficiently select an arbitrary set of variables, which for concreteness, I'll choose A1, A2, A3, A5, C2, C3, C5, E2, E3, gender, education, age?

My current strategy

I currently have a range of strategies that I use. Of course sometimes I can exploit things like the numeric position of the variables or the naming convention and use either grep to select or paste to construct. But sometimes I need a more general solution. I've used the following over the while:

1. names(df)

In the early days, I used to call names(df), copy the quoted variable names and then edit until I have what I want.

2. Use a database

Sometimes I'll have a separate data.frame that stores each variable as a row, and has columns for variable names, variable labels, and it has a column which indicates whether the variable should be retained for a particular analysis. I can then filter on that include variable and extract a vector of variable names. I find this particularly useful when I'm developing a psychological test and for various iterations I want to include or exclude certain items.

3. dput(names(df))

As Hadley Wickham once pointed out to me dput is a good option; e.g., dput(names(df)) is better than names(df) in that it outputs a list that is already in the c("var1", "var2", ...) format:

c("A1", "A2", "A3", "A4", "A5", "C1", "C2", "C3", "C4", "C5", 
"E1", "E2", "E3", "E4", "E5", "N1", "N2", "N3", "N4", "N5", "O1", 
"O2", "O3", "O4", "O5", "gender", "education", "age")

this can then be copied into the script and edited.

But can it be more efficient

I guess dput is a pretty good variable selection strategy. The efficiency of the process largely depends on how proficient you are in copying the text into your script and then editing the list of names down to those desired.

However, I still remember the efficiency of GUI based systems of variable selection. For example, in SPSS when you interact with a dialogue box you can point and click with the mouse the variables you want from the dataset. You can shift-click to select a range of variables, you can hold shift and press the down key to select one or more variables, and so on. And then you can press Paste and the command with extracted variable names is pasted into your script editor.

So, finally the core question

  • Is there a simple no frills GUI device that permits the selection of variables from a data.frame (e.g., something like guiselect(df) opens a gui window for variable selection), and returns a vector of variable names selected c("var1", "var2", ...)?
  • Is dput the best general option for selecting a set of variable names in R? Or is there a better way?
share|improve this question
If you work on Windows with Office, an option would be to save your data.frame to a csv file using write.csv(), open it with Excel, delete the columns you don't want, save, then read it back into R using read.csv(). I hope people come up with better solutions... –  flodel Feb 24 '12 at 4:11
edit(df), delete what you don't want? –  blindJesse Feb 24 '12 at 4:19
@blindJesse I rarely want to actually modify the data.frame in these contexts. In a typical set of analyses I'll be extracting 20 or 30 different subsets of variables for different analyses. It's also important to me that any changes are recorded in my script so that the results are reproducible. –  Jeromy Anglim Feb 24 '12 at 4:42
I love this question! I've just been putting up with typing out the names (didn't even know about the dput thing). It never even occurred to me to hope that there would be an R-ish way of doing it. –  Chris Beeley Feb 26 '12 at 9:26

4 Answers 4

up vote 13 down vote accepted

I'm personally a fan of the myvars <- c(...) and then using mydf[,myvars] from there on in.

However this still requires you to enter the initial variable names (even though just once), and as far as I read your question, it is this initial 'picking variable names' that is what you're asking about.

Re a simple no-frills GUI device -- I've recently been introduced to the menu function, which is exactly a simple no-frills GUI device for selecting one object out of a list of choices. Try menu(names(df),graphics=TRUE) to see what I mean (returns the column number). It even gives a nice text interface if for some reason your system can't do the graphics (try with graphics=FALSE to see what I mean).

However this is of limited use to you, as you can only select one column name. To select multiple, you can use select.list (mentioned in ?menu as the alternative to make multiple selections):

# example with iris data (I don't have 'psych' package):
vars <- select.list(names(iris),multiple=TRUE,
                    title='select your variable names',

This also takes a graphics=TRUE option (single click on all the items you want to select). It returns the names of the variables.

share|improve this answer
Thanks. You've understood my question. I didn't know about select.list. I just had a play around with it. It certainly is no frills. In terms of functionality it lacks several features that I'm used to on the SPSS gui. No shift click; No shift and cursor; typing a character does not take the selection to the next occurrence of that variable with the first character equal to the letter). But I think the idea has promise. –  Jeromy Anglim Feb 24 '12 at 4:27
It's also a pity that at least in the version I'm using tcl/tk doesn't seem to work in rstudio v.0.94.110 –  Jeromy Anglim Feb 24 '12 at 4:57
@JeromyAnglim I have no tcl/tk problems with RStudio v.0.95.258 on Windows. –  Gregor Feb 24 '12 at 6:48

You could use select.list(), like this:

DF <- data.frame(replicate(26,list(rnorm(5))))
names(DF) <- LETTERS
subDF <- DF[select.list(names(DF), multiple=TRUE)]
share|improve this answer
Thanks (+1 as well). I saw @mathematical.coffee 's answer first. But it looks like yours was first in time. As I mentioned in my comment. I think select.list is okay. However, there are many simple features which could be added to improve the usability. –  Jeromy Anglim Feb 24 '12 at 4:32
@JeromyAnglim -- Thanks. I may have begun to answer first, but @mathematical.coffee did click 'Save Edits' first. More importantly -- at least on Windows XP, and with multiple=TRUE and graphics=TRUE (my default), select.list() does nicely support both Shift-click and Ctrl-click, with their typical behavior. You're correct, though, that it doesn't take you ahead to closely matching variable names as you type. But for that sort of thing, you may be better off first exploring names(DF) with something like grep("gender", ignore.case=TRUE, value=TRUE). Best of luck! –  Josh O'Brien Feb 24 '12 at 4:41
Okay. I'm on Ubuntu; so I guess that's why I miss out on the shift-click functionality. –  Jeromy Anglim Feb 24 '12 at 4:47
Yah, I spent a few minutes thinking select.list was broken because I couldn't get shift-click and ctrl-click to work, and then I had a d'oh moment and realised normal clicking would do the trick :P –  mathematical.coffee Feb 24 '12 at 5:14

If you want a method that ignores the case of variables and perhaps picks out variables on the basis of their 'stems' then use the appropriate regex pattern and ignore.case-=TRUE and value=TRUE with grep:

 dfrm <- data.frame(var1=1, var2=2, var3=3, THIS=4, Dont=5, NOTthis=6, WANTthis=7)
unlist(sapply( c("Want", "these", "var"),
   function(x) grep(paste("^", x,sep=""), names(dfrm), ignore.case=TRUE, value=TRUE) ))
      Want       var1       var2       var3   # Names of the vector
"WANTthis"     "var1"     "var2"     "var3"   # Values matched
> dfrm[desired]
  WANTthis var1 var2 var3
1        7    1    2    3
share|improve this answer
I guess where I have a lot of variables that match a pattern, grep is an option. When I have variables with systematic naming conventions, I'll often use something like paste("var", 1:20, sep=""). However, for me, in the many cases trying to think of a good grep often takes longer than picking out the variables using something like dput and a little editing. I guess it depends on the naming conventions in the data.frame. I also worry with any grep like procedure that I may subsequently add variables to the data.frame that the existing grep might match. –  Jeromy Anglim Feb 24 '12 at 5:10

Do you mean select?

sub_df = subset(df, select=c("v1","v2","v3"))
share|improve this answer
Sorry. No. I understand the mechanics of extracting the variables from a data.frame. I'm interested in an efficient way to generate the code for the vector of variable names. –  Jeromy Anglim Feb 24 '12 at 4:17
Sorry. I didn't understand the question. –  user702432 Feb 24 '12 at 8:06

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