I'm working with datasets (from smartphone experience sampling) where I have to very frequently performed grouped operations (such as find the variability of a measure within each person, or within each day within each person, etc). Typical code might look like the code below, which calculates within-day variability for some variables, then takes the mean of the within-day variability and joins it to the original data.
output <- group_by(mydata, id, day) %>% mutate_at(vars(angr, sad, guil, anx, hap), funs(sd(., na.rm = TRUE))) %>% ungroup() %>% group_by(id) %>% summarize_at(vars(angr, sad, guil, anx, hap), funs('var_day_mean' = mean(., na.rm = TRUE))) %>% join(mydata, .)
What I want to do is be able to save this as a function so that instead of having to type out
angr, sad, guil, anx, hap many times over, I can call this code (and slight variations on it saved as different functions) on a vector of variable names in a string. So the desired functionality is:
vars <- c('angr', 'sad', 'guil', 'anx', 'hap') output <- myfunc(vars)
Where myfunc performs the piped operations above.
I'm aware that there is a vignette for non standard evaluation using dplyr but it's very limited and doesn't cover mutate or most of what I need to do with this use case, so would appreciate any insight.
Reproducible example - what I desire is essentially that the below code work, but currently the dplyr pipe cannot take vars as a character vector the way I have input it.
Edit: I was mistaken - the below code does work, and dplyr can function in this way (and can also take character vectors to group_by, making this easy to program with). I leave the code below as a (working) reference.
data <- data.frame('ID' = rep(1:10, each = 10), 'day' = rep(c(1, 1, 1, 1, 1, 2, 2, 2, 2, 2), 10), 'anx' = rnorm(100), 'sad' = rnorm(100), 'hap' = rnorm(100)) vars = c('anx', 'sad', 'hap') out <- group_by(data, ID, day) %>% mutate_at(vars, funs(sd(., na.rm = TRUE)))