7

I have this dataframe:

df1 <- data.frame(a = c("correct", "wrong", "wrong", "correct"),
  b = c(1, 2, 3, 4),
  c = c("wrong", "wrong", "wrong", "wrong"),
  d = c(2, 2, 3, 4))

a       b c     d
correct 1 wrong 2
wrong   2 wrong 2
wrong   3 wrong 3
correct 4 wrong 4

and would like to select only the columns with either the strings 'correct' or 'wrong' (i.e., columns b and d in df1), such that I get this dataframe:

df2 <- data.frame(a = c("correct", "wrong", "wrong", "correct"),
        c = c("wrong", "wrong", "wrong", "wrong"))

        a     c
1 correct wrong
2   wrong wrong
3   wrong wrong
4 correct wrong

Can I use dplyr to do this? If not, what function(s) can I use to do this? The example I've given is straightforward, in that I can just do this (dplyr):

select(df1, a, c)

However, in my actual dataframe, I have about 700 variables/columns and a few hundred columns that contain the strings 'correct' or 'wrong' and I don't know the variable/column names.

Any suggestions as to how to do this quickly? Thanks a lot!

2 Answers 2

9

You can use base R Filter which will operate on each of df1's columns and keep all ones satisfying the logical test in the function:

Filter(function(u) any(c('wrong','correct') %in% u), df1)
#        a     c
#1 correct wrong
#2   wrong wrong
#3   wrong wrong
#4 correct wrong

You can also use grepl:

Filter(function(u) any(grepl('wrong|correct',u)), df1)
2
  • I was going to do df1[sapply(df1, function(x) any(x %in% c("correct", "wrong")))] but this is nicer. Apr 25, 2015 at 12:53
  • Didn't know there's Filter in base R! Thanks a lot!
    – hsl
    Apr 25, 2015 at 13:00
2

---- update ----- Thanks Colonel Beavel. What an elegant solution. I will def use Filter more.

I want to check a speed solution too just in case time is an important factor:

locator <- apply(df1, 2, function(x) grepl("correct|wrong", x))
index <- apply(locator, 2, any)
newdf <- df1[,!index]

I expanded your data frame to 500,000 columns:

dftest <- as.data.frame(replicate(500000, df1[,1]))

Then tested the system time for a function with apply, Filter with grepl, and Filter with pattern %in%:

f <- function() {
locator <- apply(dftest, 2, function(x) grepl("correct|wrong", x))
index <- apply(locator, 2, any)
newdf <- dftest[,!index]
}

f1 <- function() {newdf <- (Filter(function(x) any(c("wrong", "correct") %in% x), dftest))}

f2 <- function() {newdf <- Filter(function(u) any(grepl('wrong|correct',u)), dftest)}


system.time(f())
   user  system elapsed 
   24.32    0.00   24.35 
system.time(f1())
   user  system elapsed 
   2.31    0.00    2.34 
system.time(f2())
   user  system elapsed 
   8.66    0.01    8.71 

Colonel's solution is by far the best one. It's clean and performs best. --credit @akrun for data.frame suggestion.

3
  • dftest is a matrix. The Filter would give a vector ouput, so I am not sure the comparison is correct. May be you need to convert the dftest to data.frame and then do the comparison. If I convert dftest to data.frame, the system.time I got are system.time(f()) #user system elapsed #19.010 0.095 19.097 ; system.time(f1()) # user system elapsed 2.290 0.004 2.292
    – akrun
    Apr 25, 2015 at 15:15
  • I also tried with dftest as a matrix. system.time(f()) # user system elapsed # 7.081 0.008 7.084 . Still it didn't beat the ColonelBeauvel's function.
    – akrun
    Apr 25, 2015 at 15:21
  • For your function, the matrix would be better (in general, matrix is faster), but unfortunately, the Filter requires a data.frame to get the correct output. It may be better to remove the initial comparisons with the Filter as it gives the wrong output.
    – akrun
    Apr 25, 2015 at 15:31

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