Identification in Auctions with Selective Entry

69 Pages Posted: 23 May 2013

See all articles by Matthew L. Gentry

Matthew L. Gentry

Florida State University

Tong Li

Vanderbilt University

Date Written: November 28, 2012

Abstract

This paper considers nonparametric identification of a two-stage entry and bidding model for auctions which we call the Affiliated-Signal (AS) model. This model assumes that potential bidders have private values, observe imperfect signals of their true values prior to entry, and choose whether to undertake a costly entry process. The AS model is a theoretically appealing candidate for the structural analysis of auctions with entry: it accommodates a wide range of entry processes, in particular nesting the Levin and Smith (1994) and Samuelson (1985) models as special cases. To date, however, the model's identification properties have not been well understood. We establish identification results for the general AS model, using variation in factors affecting entry behavior (such as potential competition or entry costs) to construct identified bounds on model fundamentals. If available entry variation is continuous, the AS model may be point identified; otherwise, it will be partially identified. We derive constructive identification results in both cases, which can readily be refined to produce the sharp identified set. We also consider policy analysis in environments where only partial identification is possible, and derive identified bounds on expected seller revenue corresponding to a wide range of counterfactual policies while accounting for endogenous and arbitrarily selective entry. Finally, we establish that our core results extend to environments with asymmetric bidders and nonseperable auction-level unobserved heterogeneity.

Keywords: Auctions, Identification, Entry, Selection, Unobserved Heterogeneity

JEL Classification: D44, C14

Suggested Citation

Gentry, Matthew L. and Li, Tong, Identification in Auctions with Selective Entry (November 28, 2012). Available at SSRN: https://ssrn.com/abstract=2268597 or http://dx.doi.org/10.2139/ssrn.2268597

Matthew L. Gentry

Florida State University ( email )

Tallahassee, FL 30306-2180
United States

HOME PAGE: http://www.matthewgentry.net

Tong Li (Contact Author)

Vanderbilt University ( email )

2301 Vanderbilt Place
Nashville, TN 37240
United States

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
174
Abstract Views
1,053
Rank
341,387
PlumX Metrics