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    <title>Estimation | Joris Pinkse</title>
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    <description>Estimation</description>
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      <title>Estimation</title>
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      <title>Estimation of auction models with shape restrictions</title>
      <link>http://joris.pinkse.org/publication/shape/</link>
      <pubDate>Mon, 15 Mar 2021 00:00:00 +0000</pubDate>
      <guid>http://joris.pinkse.org/publication/shape/</guid>
      <description>&lt;h2 id=&#34;abstract&#34;&gt;Abstract&lt;/h2&gt;
&lt;p&gt;We introduce several new estimation methods that leverage shape constraints in auction models to estimate
various objects of interest, including the distribution of a bidder’s valuations, the bidder’s ex ante expected
surplus, and the seller’s counterfactual revenue. The basic approach applies broadly in that (unlike most
of the literature) it works for a wide range of auction formats and allows for asymmetric bidders. Though
our approach is not restrictive, we focus our analysis on first–price, sealed–bid auctions with independent
private valuations. We highlight two nonparametric estimation strategies, one based on a least squares
criterion and the other on a likelihood criterion. We establish several theoretical properties of our
methods to guide empirical analysis and inference. In addition to providing the asymptotic distributions
of our estimators, we identify ways in which methodological choices should be tailored to the objects of
interest. For objects like the bidders’ ex ante surplus and the seller’s counterfactual expected revenue
with an additional symmetric bidder, we show that our input–parameter–free estimators achieve the
semiparametric efficiency bound. For objects like the bidders’ inverse strategy function, we provide an
easily implementable boundary–corrected kernel smoothing and transformation method in order to ensure
the squared error is integrable over the entire support of the valuations. An extensive simulation study
illustrates our analytical results and demonstrates the respective advantages of our least–squares and
maximum likelihood estimators in finite samples. Compared to estimation strategies based on kernel
density estimation, the simulations indicate that the smoothed versions of our estimators enjoy a relatively
large degree of robustness to the choice of an input parameter.&lt;/p&gt;
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