Is there a way to calculate the explained variance (eigenvalues) from scikit learn's MDS? I've seen this thread, but I think scikit learn's MDS is a "non-classical" form of MDS, so I'm guessing it wouldn't work? Is there a way to compute the explained variance from running scikit learn's implementation of MDS?
Also, if I'm using a precomputed dissimilarity matrix for scikit learn's MDS, is it then running classical MDS? Based on the code it seems like it's still running the SMACOF algorithm regardless (rather than eigendecomposition)?