Learning Cost Functions for Optimal Transport

22 Feb 2020 Haodong Sun Haomin Zhou Hongyuan Zha Xiaojing Ye

Learning the cost function for optimal transport from observed transport plan or its samples has been cast as a bi-level optimization problem. In this paper, we derive an unconstrained convex optimization formulation for the problem which can be further augmented by any customizable regularization... (read more)

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