Wasserstein balls, which contain all probability measures within a pre-specified Wasserstein distance to a reference measure, have recently enjoyed wide popularity in the distributionally robust optimization and machine learning communities to formulate and solve data-driven optimization problems with rigorous statistical guarantees. In this technical note we prove that the Wasserstein ball is weakly compact under mild conditions, and we offer necessary and sufficient conditions for the existence of optimal solutions. We also characterize the sparsity of solutions if the Wasserstein ball is centred at a discrete reference measure. In comparison with the existing literature, which has proved similar results under different conditions, our proofs are self-contained and shorter, yet mathematically rigorous, and our necessary and sufficient conditions for the existence of optimal solutions are easily verifiable in practice.
翻译:瓦森斯坦球包含在事先指定的瓦森斯坦距离内与参照标准有关的所有概率计量标准,最近,在分布性强的优化和机器学习社区中受到广泛欢迎,以便在严格的统计保证下制定和解决数据驱动的优化问题。在本技术说明中,我们证明瓦森斯坦球在温和条件下的紧凑性不强,并为最佳解决方案的存在提供了必要和充分的条件。如果瓦森斯坦球以离散的参照标准为中心,我们也将解决方案的广度定性。与现有文献相比,我们的证据是自足的,较短的,但在数学上是严格的,我们存在最佳解决方案的必要和充分条件在实践中很容易核查。