While I like the answer above, I wanted to give a "tidyverse" solution as well. If you are doing a lot of pipes and trying to do several things at once, as I often do, you may like this answer. Also, I find this code more "humanly" readable.
tidyselect::vars_select will select variables from a character vector in the first argument, which should contain the names of the corresponding data frame, based on a select helper function like
df <- data.frame(a1 = factor(c("Hi", "Med", "Hi", "Low"),
levels = c("Low", "Med", "Hi"), ordered = TRUE),
a2 = c("A", "D", "A", "C"), a3 = c(8, 3, 9, 9),
b1 = c(1, 1, 1, 2), b2 = c( 5, 4, 3,2), b3 = c(3, 4, 3, 4),
B1 = c(3, 6, 4, 4))
# will select the names starting with a "b" or a "B"
tidyselect::vars_select(names(df), starts_with('b', ignore.case = TRUE))
# use select in conjunction with the previous code
select(vars_select(names(df), starts_with('b', ignore.case = TRUE)))
Note that the default for
TRUE, but I put it here to show explicitly, and in case future readers are curious how to adjust the code. The
exclude arguments are also very useful. For example, you could use
vars_select(names(df), matches('^[Bb]'), include = 'a1') if you wanted everything that starts with a "B" or a "b", and you wanted to include "a1" as well.