Sista: Learning Optimal Transport Costs Under Sparsity Constraints

20 Pages Posted: 2 Jun 2021 Last revised: 6 May 2025

See all articles by Guillaume Carlier

Guillaume Carlier

Université Paris Dauphine

Arnaud Dupuy

Centre de Recherche en Économie Appliquée (CREA)

Alfred Galichon

NYU, Department of Economics and Courant Institute

Yifei Sun

New York University (NYU) - Courant Institute of Mathematical Sciences

Abstract

In this paper, we describe a novel iterative procedure called SISTA to learn the underlying cost in optimal transport problems. SISTA is a hybrid between two classical methods, coordinate descent ("S"-inkhorn) and proximal gradient descent ("ISTA"). It alternates between a phase of exact minimization over the transport potentials and a phase of proximal gradient descent over the parameters of the transport cost. We prove that this method converges linearly, and we illustrate on simulated examples that it is significantly faster than both coordinate descent and ISTA. We apply it to estimating a model of migration, which predicts the flow of migrants using country-specific characteristics and pairwise measures of dissimilarity between countries. This application demonstrates the effectiveness of machine learning in quantitative social sciences.

Keywords: coordinate descent, inverse optimal transport, ISTA

JEL Classification: C2

Suggested Citation

Carlier, Guillaume and Dupuy, Arnaud and Galichon, Alfred and Sun, Yifei, Sista: Learning Optimal Transport Costs Under Sparsity Constraints. IZA Discussion Paper No. 14397, Available at SSRN: https://ssrn.com/abstract=3855961

Guillaume Carlier

Université Paris Dauphine ( email )

Place du Maréchal de Tassigny
Paris, Cedex 16 75775
France

Arnaud Dupuy (Contact Author)

Centre de Recherche en Économie Appliquée (CREA) ( email )

Campus Limpertsberg
162A, avenue de la Faïencerie
Luxembourg, 1511
Luxembourg

Alfred Galichon

NYU, Department of Economics and Courant Institute ( email )

269 Mercer Street, 7th Floor
New York, NY 10011
United States

Yifei Sun

New York University (NYU) - Courant Institute of Mathematical Sciences ( email )

251 Mercer Street
New York, NY - 10012
United States

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