28
 names(U1)

[1] "username"     "review_count" "forum_posts"  "age"          "avg_interval"
[6] "avg_sim"      "class"

So how do I create an empty data frame U1.RN that will have same columns as U1?

  • 4
    Can I ask why you need a 0-row data frame? Depending on what you are going to do with it, it might be more efficient to do things a different way (e.g. I hope you aren't planning on filling this row by row in a loop?) – Reinstate Monica - G. Simpson Nov 24 '10 at 16:40
  • "e.g. I hope you aren't planning on filling this row by row in a loop?" - yeah, :(. What is the R-y way to do the equiv of [pseudocode] for(i in 1:6000) if (pred.U1.nb.c[i]=='unlabeled') U1.RN[j++,]<-U1[i,] [/pseudocode], where pred.U1.nb.c is a vector I got from a predict(), and want to create a data frame by selecting those rows of U1 that predict spewed out? (... trying hard to be verbose and not confusing simultaneously) – Tathagata Nov 24 '10 at 16:58
  • 6
    In R, preallocate your storage! You know you want a 6000-row data frame ahead of the loop, so create one and fill it in row by row. Or even quicker; create a matrix of the correct dimension, fill that row by row, and then convert to a data frame, as matrices are much faster to work with. If you want more help (looks like you might not even need a loop, just some simple indexing and subsetting/insertion), can you start a new Q and provide a proper, small example of what you really want to do? If you do, I'll promise to look at it and give a go at an answer. – Reinstate Monica - G. Simpson Nov 24 '10 at 17:18
  • Thanks Gavin, here's the Q: tinyurl.com/26ugewv – Tathagata Nov 24 '10 at 17:54
75

You can do this:

U1.RN <- U1[0,]
  • Perfect ..... > U1.RN<-U1[0,] > names(U1.RN) [1] "username" "review_count" "forum_posts" "age" "avg_interval" [6] "avg_sim" "class" > nrow(U1) [1] 6000 > nrow(U1.RN) [1] 0 – Tathagata Nov 24 '10 at 16:30
  • 3
    +1 neat!!!!!!!! (the extra ! were to get round the min character limit, oh, wait, ... ;-) – Reinstate Monica - G. Simpson Nov 24 '10 at 16:39
8

Along the lines of df[0,] you can also use a boolean mask which might make the code more readable:

 df[FALSE,]
4

Using dplyr, there are a few good options:

slice(U1, 0)
filter(U1, FALSE)
filter(U1, NA)

The slice approach is probably clearest.

  • 1
    filter(FALSE) also works and is maybe a little clear of intent. slice(0) might be even better. – Gregor Thomas Feb 16 '17 at 19:56
  • Agreed that slice(0) seems to be a winner on readability/clarity – joemienko Feb 16 '17 at 19:59

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