论文标题
估计适应的瓦斯汀距离中的过程
Estimating processes in adapted Wasserstein distance
论文作者
论文摘要
许多研究人员独立地引入了有关扩展通常弱拓扑的随机过程定律的拓扑结构。根据各自的科学背景,这是由与各个领域的应用和联系所激发的(例如,插头 - 随机编程,地狱怪物 - 游戏理论,Aldous-最佳停止的稳定性,Hoover -Keisler-模型理论)。值得注意的是,所有这些看似独立的方法在有限的离散时间中定义了相同的适应性弱拓扑。我们的第一个主要结果是构建经验度量的改编变体,该变体始终如一地估算全面的随机过程定律。弱适应拓扑的天然兼容度量是通过在Pflug-Pichler的开创性作品中确定的Wasserstein距离的改进来给出的。具体而言,改编后的瓦斯汀距离允许以Lipschitz的方式控制随机优化问题,定价和对冲问题,最佳停止问题等中的误差。本文的第二个主要结果产生了定量界限,以相对于适应的瓦斯坦斯坦距离,适用于改编的经验度量的收敛性。令人惊讶的是,我们获得的几乎相同的最佳速率和浓度结果是经典的经验测量值WRT已知的。瓦斯尔斯坦距离。
A number of researchers have independently introduced topologies on the set of laws of stochastic processes that extend the usual weak topology. Depending on the respective scientific background this was motivated by applications and connections to various areas (e.g. Plug-Pichler - stochastic programming, Hellwig - game theory, Aldous - stability of optimal stopping, Hoover-Keisler - model theory). Remarkably, all these seemingly independent approaches define the same adapted weak topology in finite discrete time. Our first main result is to construct an adapted variant of the empirical measure that consistently estimates the laws of stochastic processes in full generality. A natural compatible metric for the weak adapted topology is the given by an adapted refinement of the Wasserstein distance, as established in the seminal works of Pflug-Pichler. Specifically, the adapted Wasserstein distance allows to control the error in stochastic optimization problems, pricing and hedging problems, optimal stopping problems, etc. in a Lipschitz fashion. The second main result of this article yields quantitative bounds for the convergence of the adapted empirical measure with respect to adapted Wasserstein distance. Surprisingly, we obtain virtually the same optimal rates and concentration results that are known for the classical empirical measure wrt. Wasserstein distance.