I've been taking an online course in which the instructor always does the following to obtain, say, the column Col1 from a data.frame object Dat:

unlist(select(Dat, Col1))

Why not simply run Dat$Col1? I notice a difference in the "presentation" of both results, but is there any other significant divergence between the two forms? Any operation will result in the same product for both?

  • 8
    Your instructor is probably just a fan of the tidyverse. Dat$Col1 is my preferred method for getting a column. – Rich Scriven Jan 5 at 20:48
  • 9
    ...but not well-versed enough to know of pull. – Henrik Jan 5 at 20:51
  • 4
    Touche. Maybe OP can take the instructor to school. – Rich Scriven Jan 5 at 20:53
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    Wow, he loads an entire new library for that? – cory Jan 5 at 21:05
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    The rumours about the SO incident spread, and the instructor decided to gather every student. today he had started to select cigarettes without filter, and took a long, deep pull to compose himself for a minute. It was a mare’s nest. “Well, I have a crow to pluck with you, who did this?”, the teacher started. "between you and me: this is no funs. You better not cross me, or I will reduce your grades, every grade. Whichever way you slice it - period!" The students looked at each other. A complete farce. Happy new year every one - tally-ho! – Henrik Jan 5 at 22:33

(Posting comments as community wiki.)

These are not quite equivalent - unlist(select(.)) keeps (probably unwanted) names.

dd <- data.frame(Col1=c("abc","def"))
##  Factor w/ 2 levels "abc","def": 1 2
##  - attr(*, "names")= chr [1:2] "Col11" "Col12"
##  Factor w/ 2 levels "abc","def": 1 2

Your instructor is probably just a fan of the tidyverse (@RichScriven); pull(Dat, Col1) or (for extreme "tidiness") Dat %>% pull(Col1) would be more idiomatic (@Henrik). Dat$Col1 or Dat[["Col1"]] would be the base-R equivalents (the former is more convenient for interactive use, the latter is marginally safer for programming purposes since it won't do name-completion).

It hardly matters, but the tidyverse approaches are much slower.

Unit: microseconds
                     expr     min        lq       mean    median       uq
                  dd$Col1   5.296   10.9630   14.86871   13.4040   17.160
             dd[["Col1"]]   7.870    9.6535   15.18874   11.8270   16.635
           pull(dd, Col1)  44.160  108.7625  128.89342  117.8415  136.890
 unlist(select(dd, Col1)) 601.480 1132.8240 1436.44178 1214.4420 1378.141
      max neval cld
   31.036   100  a 
   88.842   100  a 
  422.462   100  a 
 8796.964   100   b
  • 2
    Since you mentioned it, pull(dd, Col1) is twice as fast as dd %>% pull(Col1). Tested with a much larger dd <- data.frame(Col1 = sample(c("abc", "def"), 1e6, TRUE)). – Rui Barradas Jan 5 at 22:37
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    Just to note, there's always the use.names argument to the base R function, unlist which will drop any unwanted names: unlist(select(.), use.names=FALSE). – lmo Jan 5 at 23:26

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