P. Gordaliza Pastor, E. Del Barrio, J. M. Loubes
We provide a Central Limit Theorem for the Monge-Kantorovich distance
between two empirical distributions with different sizes and cost
greater than or equal to 1, for observations on the real line. In the
case of cost 1 our assumptions are sharp in terms of moments and
smoothness. We prove results dealing with the choice of centering
constants. We provide a consistent estimate of the asymptotic variance
which enables to build two sample tests and confidence intervals to
certify the similarity between two distributions. These are then used to
assess a new criterion of data set fairness in classification.
Keywords: Optimal Transport, Monge-Kantorovich distance, Central Limit Theorem, Fair Learning.
Scheduled
PB-1 Probability and Applications
September 4, 2019 12:00 PM
I3L10. Georgina Blanes building