We consider the problem of allocating a distribution of items to $n$ recipients where each recipient has to be allocated a fixed, prespecified fraction of all items, while ensuring that each recipient does not experience too much envy. We show that this problem can be formulated as a variant of the semi-discrete optimal transport (OT) problem, whose solution structure in this case has a concise representation and a simple geometric interpretation. Unlike existing literature that treats envy-freeness as a hard constraint, our formulation allows us to \emph{optimally} trade off efficiency and envy continuously. Additionally, we study the statistical properties of the space of our OT based allocation policies by showing a polynomial bound on the number of samples needed to approximate the optimal solution from samples. Our approach is suitable for large-scale fair allocation problems such as the blood donation matching problem, and we show numerically that it performs well on a prior realistic data simulator.
翻译:我们考虑了将物品分配给每个受援者必须分配所有物品中固定的、预先确定的一小部分,同时确保每个受援者不会感到嫉妒太多的问题。我们表明,这一问题可以作为半分辨最佳运输(OT)问题的变体,这一问题的解决结构简洁明了,并且提供了简单的几何解释。与将无嫉妒视为硬性制约的现有文献不同,我们的配方允许我们不断交换效率和嫉妒。此外,我们通过展示一个多面体约束样本数量以接近从样本中获取的最佳解决方案所需的样本数量来研究基于OT分配政策空间的统计属性。我们的方法适合于大规模公平分配问题,如血捐匹配问题,我们用数字显示,它以一个以前现实的数据模拟器进行良好的表现。