Reviews: Subspace Detours: Building Transport Plans that are Optimal on Subspace Projections

Neural Information Processing Systems 

Post-response comments (from discussion): "I feel the response did a good job of answering points of confusion, and also added an interesting example application of color transfer. This last example/experiment is heartening, because they finally use one of their maps (MK) in an application instead of just using the distances. I would be quite interested to see a more comprehensive exploration of this, as well as further applications of the MI and MK maps (perhaps in domain adaptation or Waddington-OT, which they mention elsewhere?). It's also important to note that they included a new algorithm for subspace selection which performs projected gradient descent on the basis vectors of the subspace, which outperforms their old method in the synthetic cases. This is a nice discovery, but I think will necessitate more than a minor structural change to the paper. One would expect a more complete presentation of the algorithm, including discussion of convergence (to local optima at least?) and runtime. It would also be nice to find a non-synthetic use case for this subspace selection, if possible. In light of their response, I feel that this paper is on the right track, but could use another iteration to better argue for applicability of their maps, and to update their algorithm for subspace selection."