The recently introduced Genetic Column Generation (GenCol) algorithm has been numerically observed to efficiently and accurately compute high-dimensional optimal transport plans for general multi-marginal problems, but theoretical results on the algorithm have hitherto been lacking. The algorithm solves the OT linear program on a dynamically updated low-dimensional submanifold consisting of sparse plans. The submanifold dimension exceeds the sparse support of optimal plans only by a fixed factor $\beta$. Here we prove that for $\beta \geq 2$ and in the two-marginal case, GenCol always converges to an exact solution, for arbitrary costs and marginals. The proof relies on the concept of c-cyclical monotonicity. As an offshoot, GenCol rigorously reduces the data complexity of numerically solving two-marginal OT problems from $O(\ell^2)$ to $O(\ell)$ without any loss in accuracy, where $\ell$ is the number of discretization points for a single marginal.
翻译:最近引入的基因列生成算法(GenCol)在数字上被观测到,以高效和准确地计算出对一般多边缘问题的高维最佳运输计划,但算法的理论结果一直缺乏。算法在动态更新的低维子元上解决了OT线性程序,该低维子元由稀疏的计划组成。子维度仅以固定系数$\beta美元超过对最佳计划的微弱支持。在这里,我们证明,对于$\beta\geq 2美元和两边化的情况,Genco总是会汇集到一个精确的解决方案中,对于任意的成本和边际。证据依赖于 c-周期单调概念。作为一个分支,GenCol严格地将数字解决两边O(ell2)美元至$O(ell)美元的数据复杂性降低到不造成任何损失的美元($O(ell)美元)。在这里,$\ell$是单个边缘的离点数。</s>