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Effective Brenier Theorem : Applications to Computable Analysis and Algorithmic Randomness

机译:有效的布雷尼定理:在可计算分析和算法随机性中的应用

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Brenier's theorem is a landmark result in Optimal Transport. It postulates existence, monotonicity and uniqueness of an optimal map, with respect to the quadratic cost function, between two given probability measures (under some weak regularity conditions). We prove an effective version of Brenier's theorem: we show that for any two computable absolutely continuous measures on ℝn, μ and ν, with some restrictions on their support, there exists a computable convex function Φ, whose gradient ∇Φ is the optimal transport map between μ and ν.The main insight of the paper is the idea that an effective Brenier's theorem can be used to construct effective monotone maps on ℝn with desired (non-)differentiability properties. We use it to solve several problems at the interface of algorithmic randomness and computable analysis. In particular, we show that z ∈ ℝn is computably random if and only if every computable monotone function on ℝn is differentiable at z. Furthermore, we prove the converse of the effective Aleksandrov theorem (Galicki 2015): we show that if z ∈ ℝn is not computably random, there exists a computable convex function that is not twice differentiable at z.Finally, we prove several new characterisations of computable randomness in ℝn: in terms of differentiability of computable measures, in terms of a particular Monge-Ampère equation and in terms of critical values of computable Lipschitz functions.
机译:布雷尼尔定理是最优运输的一个标志性结果。相对于二次成本函数,它假定了两个给定概率测度之间(在某些弱规律性条件下)最优映射的存在性,单调性和唯一性。我们证明了布雷尼尔定理的有效形式:我们证明了对于any上的任何两个可计算的绝对连续测度 n ,μ和ν在支持上受到限制,存在一个可计算的凸函数Φ,其梯度ΦΦ是μ和ν之间的最佳输运映射。用于在construct上构造有效的单调图 n 具有所需的(非)可微性。我们用它来解决算法随机性和可计算性分析之间的一些问题。特别地,我们证明z∈ℝ n 当且仅当ℝ上的每个可计算单调函数是可计算的 n 可在z处微分。此外,我们证明了有效的Aleksandrov定理(Galicki 2015)的反面:我们证明如果z∈ℝ n 不是可计算的随机性,存在一个在z处不能二次微分的可计算凸函数。最后,我们证明了ℝ中可计算随机性的几个新特征 n :在可计算度量的可微性方面,在特定的Monge-Ampère方程方面,以及在可计算Lipschitz函数的临界值方面。

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