# Using dplyr within a function, non-standard evaluation

Trying to get my head around Non-Standard Evaluation as used by dplyr but without success. I'd like a short function that returns summary statistics (N, mean, sd, median, IQR, min, max) for a specified set of variables.

Simplified version of my function...

``````my_summarise <- function(df = temp,
to.sum = 'eg1',
...){
## Summarise
results <- summarise_(df,
n = ~n(),
mean = mean(~to.sum, na.rm = TRUE))
return(results)
}
``````

And running it with some dummy data...

``````set.seed(43290)
temp <- cbind(rnorm(n = 100, mean = 2, sd = 4),
rnorm(n = 100, mean = 3, sd = 6)) %>% as.data.frame()
names(temp) <- c('eg1', 'eg2')
mean(temp\$eg1)
[1] 1.881721
mean(temp\$eg2)
[1] 3.575819
my_summarise(df = temp, to.sum = 'eg1')
n mean
1 100   NA
``````

N is calculated, but the mean is not, can't figure out why.

Ultimately I'd like my function to be more general, along the lines of...

``````my_summarise <- function(df = temp,
group.by = 'group'
to.sum = c('eg1', 'eg2'),
...){
results <- list()
## Select columns
df <- dplyr::select_(df, .dots = c(group.by, to.sum))
## Summarise overall
results\$all <- summarise_each(df,
funs(n = ~n(),
mean = mean(~to.sum, na.rm = TRUE)))
## Summarise by specified group
results\$by.group <- group_by_(df, ~to.group) %>%
summarise_each(df,
funs(n = ~n(),
mean = mean(~to.sum, na.rm = TRUE)))
return(results)
}
``````

...but before I move onto this more complex version (which I was using this example for guidance) I need to get the evaluation working in the simple version first as thats the stumbling block, the call to `dplyr::select()` works ok.

Appreciate any advice as to where I'm going wrong.

• – Henrik Oct 13 '16 at 16:04

The basic idea is that you have to actually build the appropriate call yourself, most easily done with the `lazyeval` package.

In this case you want to programmatically create a call that looks like `~mean(eg1, na.rm = TRUE)`. This is how:

``````my_summarise <- function(df = temp,
to.sum = 'eg1',
...){
## Summarise
results <- summarise_(df,
n = ~n(),
mean = lazyeval::interp(~mean(x, na.rm = TRUE),
x = as.name(to.sum)))
return(results)
}
``````

Here is what I do when I struggle to get things working:

1. Remember that, just like the `~n()` you already have, the call will have to start with a `~`.
2. Write the correct call with the actual variable and see if it works (`~mean(eg1, na.rm = TRUE)`).
3. Use `lazyeval::interp` to recreate that call, and check this by running only the `interp` to visually see what it is doing.

In this case I would probably often write `interp(~mean(x, na.rm = TRUE), x = to.sum)`. But running that will give us `~mean("eg1", na.rm = TRUE)` which is treating `eg1` as a character instead of a variable name. So we use `as.name`, as is taught to us in `vignette("nse")`.

• Thanks, I had (blindly) tried starting the call to `mean()` with a tilde but hadn't clocked the need to use lazyeval::interp(). Time to go through the vignette again. Cheers. – slackline Oct 13 '16 at 10:57