The gradient of the manifold will be shown to be a central quantity in the problem of SDR. We will present a regularization algorithm for inferring the gradient geiven data. We will prove the rate of convergence of the gradient estimate to the gradient on the manifold of the true function to be of the order of the dimension of the manifold and not the much larger
The second part of the talk will rephrase the problem of SDR in a classical probabilistic (Bayesian) setting of mixture models of multivariate normals. An interesting result of this procedure is that the subspaces relevant to prediction are drawn from a posterior distribution on Grassmannian manifolds. For both methods efficacy on simulated and real data will be shown. ambient space. [video]