利用抽象计算大市场均衡

Christian Kroer, A. Peysakhovich, Eric Sodomka, N. Stier-Moses
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引用次数: 25

摘要

计算市场均衡是市场设计(如公平分配、物品分配)的一个重要实际问题。然而,计算均衡需要大量的信息(例如,所有买家对所有商品的所有估值)和计算能力。我们考虑通过应用一种用于解决复杂博弈的方法来改善这些问题:构建给定市场的粗略抽象,在抽象中求解均衡,并将价格和分配提高到原始市场。我们展示了当抽象的价格和分配代替真实的均衡时,如何约束诸如后悔、嫉妒、纳什社会福利、帕累托最优和最大份额等重要数量。然后,我们研究了从业者感兴趣的两种抽象方法:1)使用矩阵补全技术填充未知估值,2)通过将买家/项目群体聚集到较小数量的代表性买家/项目中来减小问题规模,并在这个粗糙的市场中求解均衡。我们发现,在真实的数据分配/价格相对接近均衡可以从非常粗糙的抽象计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computing Large Market Equilibria using Abstractions
Computing market equilibria is an important practical problem for market design (e.g. fair division, item allocation). However, computing equilibria requires large amounts of information (e.g. all valuations for all buyers for all items) and compute power. We consider ameliorating these issues by applying a method used for solving complex games: constructing a coarsened abstraction of a given market, solving for the equilibrium in the abstraction, and lifting the prices and allocations back to the original market. We show how to bound important quantities such as regret, envy, Nash social welfare, Pareto optimality, and maximin share when the abstracted prices and allocations are used in place of the real equilibrium. We then study two abstraction methods of interest for practitioners: 1) filling in unknown valuations using techniques from matrix completion, 2) reducing the problem size by aggregating groups of buyers/items into smaller numbers of representative buyers/items and solving for equilibrium in this coarsened market. We find that in real data allocations/prices that are relatively close to equilibria can be computed from even very coarse abstractions.
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