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Tsallis Regularized Optimal Transport and Ecological Inference

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Authors

Muzellec, Boris
Nock, Richard
Patrini, Giorgio
Nielsen, Frank

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Association for the Advancement of Artificial Intelligence (AAAI)

Abstract

Optimal transport is a powerful framework for computing distances between probability distributions. We unify the two main approaches to optimal transport, namely MongeKantorovitch and Sinkhorn-Cuturi, into what we define as Tsallis regularized optimal transport (TROT). TROT interpolates a rich family of distortions from Wasserstein to Kullback-Leibler, encompassing as well Pearson, Neyman and Hellinger divergences, to name a few. We show that metric properties known for Sinkhorn-Cuturi generalize to TROT, and provide efficient algorithms for finding the optimal transportation plan with formal convergence proofs. We also present the first application of optimal transport to the problem of ecological inference, that is, the reconstruction of joint distributions from their marginals, a problem of large interest in the social sciences. TROT provides a convenient framework for ecological inference by allowing to compute the joint distribution — that is, the optimal transportation plan itself — when side information is available, which is e.g. typically what census represents in political science. Experiments on data from the 2012 US presidential elections display the potential of TROT in delivering a faithful reconstruction of the joint distribution of ethnic groups and voter preferences.

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Citation

Muzellec, B., Nock, R., Patrini, G., & Nielsen, F. (2017). Tsallis Regularized Optimal Transport and Ecological Inference. Proceedings of the AAAI Conference on Artificial Intelligence, 31(1). https://doi.org/10.1609/aaai.v31i1.10854

Source

Proceedings of the Thirty-First AAAI Conference on Artificial Intelligence (AAAI-17)

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Open Access

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