Identification of Auction Models Using Order Statistics

Yao Luo, Ruli Xiao
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引用次数: 11

Abstract

Auction data often fail to record all bids or all relevant factors that shift bidder values. In this paper, we study the identification of auction models with unobserved heterogeneity (UH) using multiple order statistics of bids. Classical measurement error approaches require multiple independent measurements. Order statistics, by definition, are dependent, rendering classical approaches inapplicable. First, we show that models with nonseparable finite UH is identifiable using three consecutive order statistics or two consecutive ones with an instrument. Second, two arbitrary order statistics identify the models if UH provides support variations. Third, models with separable continuous UH are identifiable using two consecutive order statistics under a weak restrictive stochastic dominance condition. Lastly, we apply our methods to U.S. Forest Service timber auctions and find evidence of UH.
使用订单统计识别拍卖模型
拍卖数据往往不能记录所有出价或所有改变投标人价值的相关因素。本文研究了利用出价的多阶统计量来识别具有未观察异质性的拍卖模型。经典的误差测量方法需要多次独立的测量。根据定义,顺序统计量是依赖的,使得经典方法不适用。首先,我们证明了具有不可分离有限UH的模型是可识别的,使用三个连续的顺序统计量或两个连续的顺序统计量。其次,如果UH提供支持变化,则两个任意阶统计量确定模型。第三,在弱限制性随机优势条件下,利用两个连续序统计量可识别具有可分离连续UH的模型。最后,我们将我们的方法应用于美国林务局的木材拍卖,并找到UH的证据。
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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