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Data-Driven Optimal Transport Cost Selection For Distributionally Robust Optimization

机译:数据驱动的最佳运输成本选择,用于分布鲁棒优化

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Some recent works showed that several machine learning algorithms, such as square-root Lasso, Support Vector Machines, and regularized logistic regression, among many others, can be represented exactly as distributionally robust optimization (DRO) problems. The distributional uncertainty set is defined as a neighborhood centered at the empirical distribution, and the neighborhood is measured by optimal transport distance. In this paper, we propose a methodology which learns such neighborhood in a natural data-driven way. We show rigorously that our framework encompasses adaptive regularization as a particular case. Moreover, we demonstrate empirically that our proposed methodology is able to improve upon a wide range of popular machine learning estimators.
机译:一些最近的作品表明,许多机器索索,支持向量机和正则化逻辑回归等几种机器学习算法可以完全作为分布鲁棒优化(DRO)问题表示。分布不确定性集被定义为以经验分布为中心的邻域,并且附近通过最佳传输距离来衡量。在本文中,我们提出了一种以自然数据驱动方式学习此类社区的方法。我们严格显示我们的框架包括作为特定情况的自适应正规化。此外,我们凭经验证明我们所提出的方法能够改善各种流行的机器学习估计。

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