Reverse Mechanism Design

Nima Haghpanah, Jason D. Hartline
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引用次数: 47

Abstract

Optimal mechanisms for agents with multi-dimensional preferences are generally complex. This complexity makes them challenging to solve for and impractical to run. In a typical mechanism design approach, a model is posited and then the optimal mechanism is designed for the model. Successful mechanism design gives mechanisms that one could at least imagine running. By this measure, multi-dimensional mechanism design has had only limited success. In this paper we take the opposite approach, which we term reverse mechanism design. We start by hypothesizing the optimality of a particular form of mechanism that is simple and reasonable to run, then we solve for sufficient conditions for the mechanism to be optimal (among all mechanisms). This paper has two main contributions. The first is in codifying the method of virtual values from single-dimensional auction theory and extending it to agents with multidimensional preferences. The second is in applying this method to two paradigmatic classes of multi-dimensional preferences. The first class is unit-demand preferences (e.g., a homebuyer who wishes to buy at most one house); for this class we give sufficient conditions under which posting a uniform price for each item is optimal. This result generalizes one of Alaei et al. [2013] for a consumer with values uniform on interval [0; 1], and contrasts with an example of Thanassoulis [2004] for a consumer with values uniform on interval [5; 6] where uniform pricing is not optimal. The second class is additive preferences, for this class we give sufficient conditions under which posting a price for the grand bundle is optimal. This result generalizes a recent result of Hart and Nisan [2012] and relates to work of Armstrong [1999]. Similarly to an approach of Alaei et al. [2013], these results for single-agent pricing problems can be generalized naturally to multi-agent auction problems.
反向机构设计
具有多维偏好的主体的最优机制通常是复杂的。这种复杂性使得它们很难求解,也无法运行。在一种典型的机构设计方法中,先建立一个模型,然后为该模型设计最优机构。成功的机制设计提供了人们至少可以想象运行的机制。从这个角度来看,多维机制设计的成功是有限的。在本文中,我们采取相反的方法,我们称之为反向机制设计。我们首先假设一种简单合理运行的特定形式的机制的最优性,然后我们求解该机制(在所有机制中)最优的充分条件。本文有两个主要贡献。首先是将虚拟价值的方法从单一维度的拍卖理论中编纂出来,并将其扩展到具有多维偏好的代理人。第二是将这种方法应用于两类典型的多维偏好。第一类是单位需求偏好(例如,希望最多购买一套房子的购房者);对于这个类,我们给出了足够的条件,在这些条件下,对每个项目发布统一的价格是最优的。这个结果推广了Alaei et al.[2013]对于区间[0;1],并与Thanassoulis[2004]的一个消费者的例子进行对比,该消费者的值在区间[5;[6]统一定价不是最优的。第二类是附加偏好,对于这一类,我们给出了足够的条件,在这些条件下,为大捆绑包发布价格是最优的。这一结果概括了Hart和Nisan[2012]最近的结果,并与Armstrong[1999]的工作有关。与Alaei等人[2013]的方法类似,这些单代理定价问题的结果可以自然地推广到多代理拍卖问题。
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