We document the numerical challenges we experienced estimating random-coefficient demand models as in Berry, Levinsohn, and Pakes (1995) using two well-known data sets and a thorough optimization design. The optimization algorithms often converge at points where the first- and second-order optimality conditions fail. There are also cases of convergence at local optima. On convergence, the variation in the values of the parameter estimates translates into variation in the models' economic predictions. Price elasticities and changes in consumer and producer welfare following hypothetical merger exercises vary at least by a factor of 2 and up to a factor of 5
Estimation of demand and supply in differentiated products markets is a central issue in Empirical I...
We provide an asymptotic distribution theory for a class of Generalized Method of Moments estimators...
We conduct Monte Carlo experiments to investigate the biases of assuming a misspecified demand model...
We document the numerical challenges we experienced estimating random-coefficient demand models as i...
We document the numerical challenges we experienced estimating random-coefficient demand models as i...
Empirical exercises in economics frequently involve estimation of highly nonlinear models. The crite...
In this paper, we share our experience with merger simulations using a Random Coefficient Logit mode...
The paper demonstrates that random coefficient models can be estimated by maximum likelihood if they...
We extend the Berry, Levinsohn and Pakes (BLP, 1995) random coefficients discrete-choice demand mode...
We shed new light on the performance of Berry, Levinsohn and Pakes’ (1995) GMM estimator of the aggr...
Demand estimation in product-differentiated industries has been the central object in many studies i...
We shed new light on the performance of Berry, Levinsohn and Pakes' (1995) GMM estimator of the aggr...
The stability of the US consumer demand for meat has been a popular topic for journal articles I sho...
We extend the Berry, Levinsohn and Pakes (BLP, 1995) random coefficients discrete-choice demand mode...
This article proposes a computationally fast estimator for random coefficients logit demand models u...
Estimation of demand and supply in differentiated products markets is a central issue in Empirical I...
We provide an asymptotic distribution theory for a class of Generalized Method of Moments estimators...
We conduct Monte Carlo experiments to investigate the biases of assuming a misspecified demand model...
We document the numerical challenges we experienced estimating random-coefficient demand models as i...
We document the numerical challenges we experienced estimating random-coefficient demand models as i...
Empirical exercises in economics frequently involve estimation of highly nonlinear models. The crite...
In this paper, we share our experience with merger simulations using a Random Coefficient Logit mode...
The paper demonstrates that random coefficient models can be estimated by maximum likelihood if they...
We extend the Berry, Levinsohn and Pakes (BLP, 1995) random coefficients discrete-choice demand mode...
We shed new light on the performance of Berry, Levinsohn and Pakes’ (1995) GMM estimator of the aggr...
Demand estimation in product-differentiated industries has been the central object in many studies i...
We shed new light on the performance of Berry, Levinsohn and Pakes' (1995) GMM estimator of the aggr...
The stability of the US consumer demand for meat has been a popular topic for journal articles I sho...
We extend the Berry, Levinsohn and Pakes (BLP, 1995) random coefficients discrete-choice demand mode...
This article proposes a computationally fast estimator for random coefficients logit demand models u...
Estimation of demand and supply in differentiated products markets is a central issue in Empirical I...
We provide an asymptotic distribution theory for a class of Generalized Method of Moments estimators...
We conduct Monte Carlo experiments to investigate the biases of assuming a misspecified demand model...