Estimating First-Price Auctions with an Unknown Number of Bidders: A Misclassification Approach
In this paper, we consider nonparametric identification and estimation of first-price auction models when N*, the number of potential bidders, is unknown to the researcher, but observed by bidders. Exploiting results from the recent econometric literature on models with misclassification error, we develop a nonparametric procedure for recovering the distribution of bids conditional on the unknown N*. Monte Carlo results illustrate that the procedure works well in practice. We present illustrative evidence from a dataset of procurement auctions, which shows that accounting for the unobservability of N* can lead to economically meaningful differences in the estimates of bidders' profit margins.
Year of publication: |
2007-12
|
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Authors: | Hu, Yingyao ; Shum, Matthew |
Institutions: | Department of Economics, Johns Hopkins University |
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