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A central limit theorem for L_p transportation cost on the real line with application to fairness assessment in machine learning

机译:L_P运输成本的中心限制定理在实际线路上,并应用机器学习中的公平评估

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摘要

We provide a central limit theorem for the Monge–Kantorovich distance between two empirical distributions with sizes n and m, W_p(P_n,Q_m), p ≥ 1, for observations on the real line. In the case p > 1 our assumptions are sharp in terms of moments and smoothness. We prove results dealing with the choice of centring 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.
机译:我们为Monge -Kantorovich距离之间的两个经验分布之间的距离为N和M,W_P(P_N,Q_M),P≥1之间提供了一个中心限制定理,以在实际线上观察。 在p> 1的情况下,我们的假设在矩和光滑度方面是锋利的。 我们证明了与中心常数选择有关的结果。 我们提供对渐近方差的一致估计,该差异能够构建两个样本测试和置信区间,以证明两个分布之间的相似性。 然后使用这些来评估分类中数据集公平性的新标准。

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