We propose two approaches to estimate semiparametric discrete choice models for bundles. Our first approach is a kernel-weighted rank estimator based on a matching-based identification strategy. We establish its complete asymptotic properties and prove the validity of the nonparametric bootstrap for inference. We then introduce a new multi-index least absolute deviations (LAD) estimator as an alternative, of which the main advantage is its capacity to estimate preference parameters on both alternative- and agent-specific regressors. Both methods can account for arbitrary correlation in disturbances across choices, with the former also allowing for interpersonal heteroskedasticity. We also demonstrate that the identification strategy underly...
Random coefficient discrete choice models are a popular method for estimating demand in dif-ferentia...
We consider identification of nonparametric random utility models of multinomial choice using "micro...
This paper studies nonparametric identification in market level demand models for differentiated pro...
In this research, we provide a new method to estimate discrete choice models with unobserved heterog...
This article considers semiparametric estimation of discrete choice models. The estimation methods a...
This paper introduces new forms, sampling and estimation approaches fordiscrete choice models. The n...
We study nonparametric identification of single-agent discrete choice models for bundles (without re...
A semi parametric profil ~ likelihood method is proposed for estimation of sample selection models. ...
We propose a new approach to the semiparametric analysis of panel data binary choice models with fix...
In this paper we reconsider the notion of optimality in estimation of partially identified models. W...
This thesis first considers some extensions of the existing discrete choice models. One such extensi...
The increasing availability of individual-level consumer data has facilitated the development of new...
We detail the basic theory for models of discrete choice. This encompasses methods of estimation...
The use of nonparametric methods, which posit fewer assumptions and greater model flexibility than p...
In discrete choice models, heterogeneity in consumer sensitivity to product characteristics is typic...
Random coefficient discrete choice models are a popular method for estimating demand in dif-ferentia...
We consider identification of nonparametric random utility models of multinomial choice using "micro...
This paper studies nonparametric identification in market level demand models for differentiated pro...
In this research, we provide a new method to estimate discrete choice models with unobserved heterog...
This article considers semiparametric estimation of discrete choice models. The estimation methods a...
This paper introduces new forms, sampling and estimation approaches fordiscrete choice models. The n...
We study nonparametric identification of single-agent discrete choice models for bundles (without re...
A semi parametric profil ~ likelihood method is proposed for estimation of sample selection models. ...
We propose a new approach to the semiparametric analysis of panel data binary choice models with fix...
In this paper we reconsider the notion of optimality in estimation of partially identified models. W...
This thesis first considers some extensions of the existing discrete choice models. One such extensi...
The increasing availability of individual-level consumer data has facilitated the development of new...
We detail the basic theory for models of discrete choice. This encompasses methods of estimation...
The use of nonparametric methods, which posit fewer assumptions and greater model flexibility than p...
In discrete choice models, heterogeneity in consumer sensitivity to product characteristics is typic...
Random coefficient discrete choice models are a popular method for estimating demand in dif-ferentia...
We consider identification of nonparametric random utility models of multinomial choice using "micro...
This paper studies nonparametric identification in market level demand models for differentiated pro...