I would like to make classification trees to predict the presence/absence of 1 bird species based on several variables. I know that rpart handles univariate partitioning and mvpart handles multivariate partitioning, but I'd like to use mvpart for my one-variable tree because of its more flexible output. Does anyone know of a reason that I should not do this? Will the splits be different in rpart vs mvpart with the same exact input?
It cannot be guaranteed that the splits will be the same;
You may end up with the same model/splits but as the two functions are using two different measures of node impurity this may just be a fluke.
Finally, consider using the party package and its function
As an aside, also look into the plotmo package which includes enhanced plots for a number of tree-like models including, IIRC,