Optimal Transport (OT) is a fundamental tool for comparing probability distributions, but its exact computation remains prohibitive for large datasets. In this work, we introduce novel families of upper and lower bounds for the OT problem constructed by aggregating solutions of mini-batch OT problems. The upper bound family contains traditional mini-batch averaging at one extreme and a tight bound found by optimal coupling of mini-batches at the other. In between these extremes, we propose various methods to construct bounds based on a fixed computational budget. Through various experiments, we explore the trade-off between computational budget and bound tightness and show the usefulness of these bounds in computer vision applications.
翻译:最佳运输(OT)是比较概率分布的基本工具,但其精确计算对于大型数据集来说仍然令人望而却步。 在这项工作中,我们引入了通过综合微型批量OT问题解决方案构建的奥特问题新式的上下界家庭。上界家庭包含传统的小型批量,平均在一个极端,而另一端则通过最优的小型客箱联结而发现的紧凑。在这些极端之间,我们提出了基于固定计算预算构建界限的各种方法。我们通过各种实验,探索计算预算与紧凑性之间的权衡,并展示这些界限在计算机视觉应用中的有用性。