I'm writing a function that uses kmeans to determine bin widths to convert a continuous measurement (a predicted probability) into an integer (one of 3 bins). I've stumbled upon an edge case in which it's possible for my algorithm to (correctly) predict the same probability for a whole set, and I want to handle that situation. I'm using the `rattle`

package's `binning()`

function in the following way:

```
btsKmeansBin <- function(x, k = 3, default = c(0, 0.3, 0.5, 1)) {
result <- binning(x, bins = k, method = "kmeans", ordered = T)
bins <- attr(result, "breaks")
attr(bins, "names") <- NULL
bins <- bins[order(bins)]
bins[1] <- 0
bins[length(bins)] <- 1
return(bins)
}
```

Run this function on `x <- c(.5,.5,.5,.5,.5,.5)`

, and you'll get an error at the `order(bins)`

step, because `bins`

will be NULL and therefore not a vector.

Obviously, if `x`

has only one distinct value, kmeans shouldn't work. In this case, I'd like to return the `default`

bin divisions. When this happens, `binning`

issues "Warning: the variable is not considered." So I'd like to use `tryCatch`

to handle this warning, but surrounding the `result <- ...`

line with the following code doesn't work the way I expect:

```
...
tryCatch({
result <- binning(x, bins = k, method = "kmeans", ordered = T)
}, warning = function(w) {
warn(sprintf("%s. Using default values", w))
return(default)
}, error = function(e) {
stop(e)
})
...
```

The warning gets printed as though I hadn't used `tryCatch`

, and the code progresses past the `return`

statement and throws the error from `order`

again. I have tried a bunch of variations to no avail. What am I missing, here??