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database$VAR

which has values of 0's and 1's.

How can I redefine the data frame so that the 1's are removed?

Thanks!

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1  
Do you want the value 1 removed or all observations with the value 1 removed? Or do you want to split the data frame to separate observations with VAR == 0 and VAR == 1? –  Greg Aug 31 '10 at 22:32
    
I want all observations with value 1 removed please so that when I call on database$VAR, I will only get 0's. Thanks! –  Brian Aug 31 '10 at 22:38

3 Answers 3

up vote 1 down vote accepted

Try this:

R> df <- data.frame(VAR = c(0,1,0,1,1))
R> df[ -which(df[,"VAR"]==1), , drop=FALSE]
  VAR
1   0
3   0
R> 

We use which( booleanExpr ) to get the indices for which your condition holds, then use -1 on these to exclude them and lastly use a drop=FALSE to prevent our data.frame of one columns from collapsing into a vector.

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Interesting but if I call database$VAR after this, I still am getting both 1's and 0's.... –  Brian Aug 31 '10 at 22:46
    
You would have to assign the result back to database or assign it to a new variable. –  Greg Aug 31 '10 at 22:57
    
When I go: data1base$NEW<- df I get the error: Error in $<-.data.frame(*tmp*`, "NEW", value = list(VAR = c(0, 1, : replacement has 5 rows, data has 819 –  Brian Aug 31 '10 at 23:20
    
you would have to use database <- database[-which(database[,"VAR"]==1), , drop=FALSE] –  Greg Aug 31 '10 at 23:26
    
Thank you! That works! –  Brian Aug 31 '10 at 23:28

TMTOWTDI

Using subset:

df.new <- subset(df, VAR == 0)

EDIT:

David's solution seems to be the fastest on my machine. Subset seems to be the slowest. I won't even pretend to try and understand what's going on under that accounts for these differences:

> df <- data.frame(y=rep(c(1,0), times=1000000))
> 
> system.time(df[ -which(df[,"y"]==1), , drop=FALSE])
   user  system elapsed 
   0.16    0.05    0.23 
> system.time(df[which(df$y == 0), ])
   user  system elapsed 
   0.03    0.01    0.06 
> system.time(subset(df, y == 0))
   user  system elapsed 
   0.14    0.09    0.27 
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Include drop=FALSE in second timing. It will slow down this method. –  Marek Sep 1 '10 at 14:32

I'd upvote the answer using "subset" if I had the reputation for it :-) . You can also use a logical vector directly for subsetting -- no need for "which":

d <- data.frame(VAR = c(0,1,0,1,1))
d[d$VAR == 0, , drop=FALSE]

I'm surprised to find the logical version a little faster in at least one case. (I expected the "which" version might win due to R possibly preallocating the proper amount of storage for the result.)

> d <- data.frame(y=rep(c(1,0), times=1000000))
> system.time(d[which(d$y == 0), ])
   user  system elapsed 
  0.119   0.067   0.188 
> system.time(d[d$y == 0, ])
   user  system elapsed 
  0.049   0.024   0.074 
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+1 for timing the code –  midtiby Sep 1 '10 at 6:46
    
You should include drop=FALSE in timing. And for me which is faster (with TRUE or FALSE). –  Marek Sep 1 '10 at 14:14

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