This paper proposes an approach to proving nonparametric identification for distributions of bidders' values in asymmetric second-price auctions. I consider the case when bidders have independent private values and the only available data pertain to the winner's identity and the transaction price. My proof of identification is constructive and is based on establishing the existence and uniqueness of a solution to the system of nonlinear differential equations that describes relationships between unknown distribution functions and observable functions. The proof is conducted in two logical steps. First, I prove the existence and uniqueness of a local solution. Then I describe a method that extends this local solution to the whole support. Th...
This paper theoretically investigates which auctions are selected by competing sellers when they can...
This paper proposes a semiparametric estimation procedure of the first-price auction model with risk...
This dissertation is divided into three chapters. In Chapter 1, I propose a nonparametric estimator ...
This paper proposes an approach to proving nonparametric identification for distributions of bidders...
This paper proposes an approach to proving nonparametric identification for dis-tributions of bidder...
This paper examines identification in second-price and ascending auctions within the private-values ...
The first novelty of this paper is that we show global identification of the private values distribu...
The first novelty of this paper is that we show global identification of the private values distribu...
We consider nonparametric identification of independent private value first-price auction models, in...
This paper introduces a version of the interdependent value model of Milgrom and Weber (1982), where...
My dissertation contributes to the structural nonparametric econometrics of auctions and contests wi...
The aim of this thesis is to develop efficient and practically useful Bayesian methods for statistic...
The literature has demonstrated that second-price common-value auctions are sensitive to the presenc...
Thesis (Ph.D.)--University of Washington, 2016-06This dissertation contributes to the structural auc...
This paper presents new identification results for models of first-price, second-price, ascending (E...
This paper theoretically investigates which auctions are selected by competing sellers when they can...
This paper proposes a semiparametric estimation procedure of the first-price auction model with risk...
This dissertation is divided into three chapters. In Chapter 1, I propose a nonparametric estimator ...
This paper proposes an approach to proving nonparametric identification for distributions of bidders...
This paper proposes an approach to proving nonparametric identification for dis-tributions of bidder...
This paper examines identification in second-price and ascending auctions within the private-values ...
The first novelty of this paper is that we show global identification of the private values distribu...
The first novelty of this paper is that we show global identification of the private values distribu...
We consider nonparametric identification of independent private value first-price auction models, in...
This paper introduces a version of the interdependent value model of Milgrom and Weber (1982), where...
My dissertation contributes to the structural nonparametric econometrics of auctions and contests wi...
The aim of this thesis is to develop efficient and practically useful Bayesian methods for statistic...
The literature has demonstrated that second-price common-value auctions are sensitive to the presenc...
Thesis (Ph.D.)--University of Washington, 2016-06This dissertation contributes to the structural auc...
This paper presents new identification results for models of first-price, second-price, ascending (E...
This paper theoretically investigates which auctions are selected by competing sellers when they can...
This paper proposes a semiparametric estimation procedure of the first-price auction model with risk...
This dissertation is divided into three chapters. In Chapter 1, I propose a nonparametric estimator ...