39

Is there a way for me to subset data based on column names starting with a particular string? I have some columns which are like ABC_1 ABC_2 ABC_3 and some like XYZ_1, XYZ_2,XYZ_3 let's say.

How can I subset my df based only on columns containing the above portions of text (lets say, ABC or XYZ)? I can use indices, but the columns are too scattered in data and it becomes too much of hard coding.

Also, I want to only include rows from each of these columns where any of their value is >0 so if either of the 6 columns above has a 1 in the row, it makes a cut into my final data frame.

  • What language?! R? Add the relevant tag or no-one following R will see it. Please give a reproducible example, i.e. the structure of your dataframe, preferably dput( head( df ) ), or at the very least, str( df ). – Simon O'Hanlon Sep 3 '13 at 8:24
66

Try grepl on the names of your data.frame. grepl matches a regular expression to a target and returns TRUE if a match is found and FALSE otherwise. The function is vectorised so you can pass a vector of strings to match and you will get a vector of boolean values returned.

Example

#  Data
df <- data.frame( ABC_1 = runif(3),
            ABC_2 = runif(3),
            XYZ_1 = runif(3),
            XYZ_2 = runif(3) )

#      ABC_1     ABC_2     XYZ_1     XYZ_2
#1 0.3792645 0.3614199 0.9793573 0.7139381
#2 0.1313246 0.9746691 0.7276705 0.0126057
#3 0.7282680 0.6518444 0.9531389 0.9673290

#  Use grepl
df[ , grepl( "ABC" , names( df ) ) ]
#      ABC_1     ABC_2
#1 0.3792645 0.3614199
#2 0.1313246 0.9746691
#3 0.7282680 0.6518444

#  grepl returns logical vector like this which is what we use to subset columns
grepl( "ABC" , names( df ) )
#[1]  TRUE  TRUE FALSE FALSE

To answer the second part, I'd make the subset data.frame and then make a vector that indexes the rows to keep (a logical vector) like this...

set.seed(1)
df <- data.frame( ABC_1 = sample(0:1,3,repl = TRUE),
            ABC_2 = sample(0:1,3,repl = TRUE),
            XYZ_1 = sample(0:1,3,repl = TRUE),
            XYZ_2 = sample(0:1,3,repl = TRUE) )

# We will want to discard the second row because 'all' ABC values are 0:
#  ABC_1 ABC_2 XYZ_1 XYZ_2
#1     0     1     1     0
#2     0     0     1     0
#3     1     1     1     0


df1 <- df[ , grepl( "ABC" , names( df ) ) ]

ind <- apply( df1 , 1 , function(x) any( x > 0 ) )

df1[ ind , ]
#  ABC_1 ABC_2
#1     0     1
#3     1     1
  • 5
    @kaos1511 it is a regular expression so yes. Read ?regexpr To get XYZ as well chain them together in the expresison like this... grepl( "ABC|XYZ" , names( df ) ) – Simon O'Hanlon Sep 3 '13 at 8:36
  • Thanks simon, how do i also ensure i only take rows which are >0 value for all columns that match the string i specify for column names?..will i need to see the dataframe that results and then specify manually?. If i see that there are 6 columns that match, should i say something like test<-df[ , grepl( "ABC|XYZ" , names( df ) ) ] and then test<-test[c(1:6)>0], will this work? – user2724207 Sep 3 '13 at 8:46
  • 1
    @kaos1511 that is a different question! It is bad form to keep asking question in the comments after the OP has been answered and it frustrates those who answer. Please ask a new question so everyone will see it. Thanks. – Simon O'Hanlon Sep 3 '13 at 8:52
  • 1
    Simon, but i already have that up in my question if yu see last paragraph.. – user2724207 Sep 3 '13 at 8:59
  • @kaos1511 apologies. See edit at bottom. – Simon O'Hanlon Sep 3 '13 at 10:34
18

You can also use starts_with and dplyr's select() like so:

df <- df %>% dplyr:: select(starts_with("ABC"))
5

Using dplyr you can:

df <- df %>% dplyr:: select(grep("ABC", names(df)), grep("XYZ", names(df)))
3

Just in case for data.table users, the following works for me:

df[, grep("ABC", names(df)), with = FALSE]
2

This worked for me:

df[,names(df) %in% colnames(df)[grepl(str,colnames(df))]]

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