Tensor optimal transport, distance between sets of measures and tensor scaling

05/02/2020
by   Shmuel Friedland, et al.
0

We study the optimal transport problem for d>2 discrete measures. This is a linear programming problem on d-tensors. It gives a way to compute a "distance" between two sets of discrete measures. We introduce an entropic regularization term, which gives rise to a scaling of tensors. We give a variation of the celebrated Sinkhorn scaling algorithm. We show that this algorithm can be viewed as a partial minimization algorithm of a strictly convex function. Under appropriate conditions the rate of convergence is geometric and we estimate the rate. Our results are generalizations of known results for the classical case of two discrete measures.

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