Learning What's Going on: Reconstructing Preferences and Priorities from Opaque Transactions

Avrim Blum, Y. Mansour, Jamie Morgenstern
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引用次数: 7

Abstract

We consider a setting where n buyers, with combinatorial preferences over m items, and a seller, running a priority-based allocation mechanism, repeatedly interact. Our goal, from observing limited information about the results of these interactions, is to reconstruct both the preferences of the buyers and the mechanism of the seller. More specifically, we consider an online setting where at each stage, a subset of the buyers arrive and are allocated items, according to some unknown priority that the seller has among the buyers. Our learning algorithm observes only which buyers arrive and the allocation produced (or some function of the allocation, such as just which buyers received positive utility and which did not), and its goal is to predict the outcome for future subsets of buyers. For this task, the learning algorithm needs to reconstruct both the priority among the buyers and the preferences of each buyer. We derive mistake bound algorithms for additive, unit-demand and single minded buyers. We also consider the case where buyers' utilities for a fixed bundle can change between stages due to different (observed) prices. Our algorithms are efficient both in computation time and in the maximum number of mistakes (both polynomial in the number of buyers and items).
了解正在发生的事情:从不透明的交易中重建偏好和优先级
我们考虑一个设置,其中n个对m个商品有组合偏好的买家和一个运行基于优先级分配机制的卖家反复互动。通过观察这些互动结果的有限信息,我们的目标是重构买方的偏好和卖方的机制。更具体地说,我们考虑一个在线设置,其中在每个阶段,买家的子集到达并根据卖家在买家中的某些未知优先级分配物品。我们的学习算法只观察哪些买家到达以及产生的分配(或分配的某些函数,例如哪些买家获得了正效用,哪些没有),其目标是预测未来买家子集的结果。对于这个任务,学习算法需要重建买家之间的优先级和每个买家的偏好。我们导出了可加性、单位需求和单一购买者的错误界算法。我们还考虑了这样一种情况,即由于不同的(观察到的)价格,固定捆绑的买方效用在不同阶段之间会发生变化。我们的算法在计算时间和最大错误数量(购买者和物品数量都是多项式)方面都是高效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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