In this short expository note, we describe a unified algorithmic perspective on several classical problems which have traditionally been studied in different communities. This perspective views the main characters -- the problems of Optimal Transport, Minimum Mean Cycle, Matrix Scaling, and Matrix Balancing -- through the same lens of optimization problems over joint probability distributions P(x,y) with constrained marginals. While this is how Optimal Transport is typically introduced, this lens is markedly less conventional for the other three problems. This perspective leads to a simple and unified framework spanning problem formulation, algorithm development, and runtime analysis.
翻译:在这个简短的解说性说明中,我们描述了对不同社区历来研究过的一些传统问题的统一算法观点。这个观点通过与受限制边缘的P(x,y)联合概率分布P(x,y)的优化问题相同的透镜来看待主要特征 -- -- 最佳运输、最低中值周期、矩阵缩放和矩阵平衡问题。虽然这是最佳运输通常采用的方法,但对于其他三个问题,这一视角显然不那么常见。这个观点导致一个简单统一的框架,涵盖问题拟订、算法开发和运行时间分析。