I have run in to a ML problem that requires us to use a multi-dimensional Y. Right now we are training independent models on each dimension of this output, which does not take advantage of additional information from the fact outputs are correlated.

I have been reading this to learn more about the few ML algorithms which have been truly extended to handle multidimensional outputs. Decision Trees are one of them.

Does scikit-learn use "Multi-target regression trees" in the event fit(X,Y) is given a multidimensional Y, or does it fit a separate tree for each dimension? I spent some time looking at the code but didn't figure it out.