There isn't an easy way. If you study the code for
rfe.default() you will note that in cases where
method = "boot" the
createResample() function is used. This is the function that generates the bootstrap samples. Similar functions are used for the other CV methods.
There is a hard way; overtake the
create*() function that is most appropriate; say you want to do a block bootstrap or ME bootstrap, take over the
createResample() function and use
method = "boot", or if you want a special form of CV, use
method = "cv" and take over
You will need to write your own
create*() function and replace the one in the caret NAMESPACE with your version. Not easy but eminently doable. Say you write your own
createResample() function; first you need to note that this function creates n =
times bootstrap samples returning this in a matrix with
times columns and as many rows as your have samples. You need to write a custom
createResample() function that returns the same object but which performs the time series bootstrapping you want to employ.
Once you have written that function you then need to get it into the caret namespace so that it is used by functions in the caret package. For this you use
assignInNamespace(). Say your new bootstrapping function is called
createMyResample() and it is your workspace, to insert this into the caret namespace do:
assignInNamespace("createResample", createMyResample, ns = "caret")
Sorry I can't be more specific but you don't say how you want the bootstrap/CV to be performed nor what R code you want to use to do the resampling. If you provide further details on how you would do the resampling I will take another look and see if I can help you write your
Failing all of this, contact Max Kuhn, the author and maintainer of caret; he may be able to advice further or at least you can suggest this feature as a wish-list for a future version.