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Conditionally independent private information in OCS wildcat auctions

机译:OCS野猫拍卖中的有条件独立私人信息

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摘要

In this paper, we consider the conditionally independent private information (CIPI) model which includes the conditionally independent private value (CIPU) model and the pure common value (CV) model as polar cases. Specifically, we model each bidder's private information as the product of two unobserved independent components, one specific to the auctioned object and common to all bidders, the other specific to each bidder. The structural elements of the model include the distribution of the common component and the idiosyncratic component. Noting that the above decomposition is related to a measurement error problem with multiple indicators, we show that both distributions are identified from observed bids the CIPV case. On the other hand, identification of the pure CV model is achieved under additional restrictions. We then propose a computationally simple two-step nonparametric estimation procedure using kernel estimations in the first step and empirical characteristics functions in the second step. The consistency of the two density estimations is established. An application to the OCS wildcat auctions shows that the distribution of the common component is much more concentrated than the distribution of the idiosyncratic component. This suggests that idiosyncratic components are more likely to explain the variability of private information and hence of bids than the common component.
机译:在本文中,我们将条件独立私人信息(CIPI)模型视为极例,其中包括条件独立私人价值(CIPU)模型和纯公共价值(CV)模型。具体而言,我们将每个投标人的私人信息建模为两个未观察到的独立组件的乘积,一个独立于拍卖对象,并且对所有投标人都是公用的,另一个特定于每个投标人。模型的结构元素包括共同成分和特异成分的分布。注意到以上分解与具有多个指标的测量误差问题有关,我们表明,这两种分布都是从CIPV案例的观察出价中识别出来的。另一方面,纯CV模型的识别是在其他限制条件下实现的。然后,我们在第一步中使用核估计,在第二步中使用经验特征函数,提出一种计算简单的两步非参数估计过程。建立了两个密度估计的一致性。在OCS野猫拍卖中的一项应用表明,公共成分的分布比特质成分的分布集中得多。这表明,与普通成分相比,特质成分更可能解释私人信息的可变性,从而解释出价的可变性。

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