Semi-Nonparametric Estimation of Random Coefficient Logit Model for Aggregate Demand

Semi-Nonparametric Estimation of Random Coefficient Logit Model for Aggregate Demand
Title Semi-Nonparametric Estimation of Random Coefficient Logit Model for Aggregate Demand PDF eBook
Author Zhentong Lu
Publisher
Pages 71
Release 2020
Genre
ISBN

Download Semi-Nonparametric Estimation of Random Coefficient Logit Model for Aggregate Demand Book in PDF, Epub and Kindle

In this paper, we propose a two-step semi-nonparametric estimator for the widely used random coefficient logit demand model. In the first step, exploiting the structure of logit choice probabilities, we transform the full demand system into a partial linear model and estimate the fixed (non-random) coefficients using standard linear sieve generalized method of moment (GMM). In the second step, we construct a sieve minimum distance (MD) estimator to uncover the distribution of random coefficients nonparametrically. We establish the asymptotic properties of the estimator and show the semi-nonparametric identification of the model in a large market environment. Monte Carlo simulations and empirical illustrations support the theoretical results and demonstrate the usefulness of our estimator in practice.

Flexible Estimation of Random Coefficient Logit Models of Differentiated Product Demand

Flexible Estimation of Random Coefficient Logit Models of Differentiated Product Demand
Title Flexible Estimation of Random Coefficient Logit Models of Differentiated Product Demand PDF eBook
Author Johannes Kandelhardt
Publisher
Pages 0
Release 2023
Genre
ISBN 9783863043988

Download Flexible Estimation of Random Coefficient Logit Models of Differentiated Product Demand Book in PDF, Epub and Kindle

The Berry, Levinsohn, and Pakes (1995, BLP) model is widely used to obtain parameter estimates of market forces in differentiated product markets. The results are often used as an input to evaluate economic activity in a structural model of demand and supply. Precise estimation of parameter estimates is therefore crucial to obtain realistic economic predictions. The present paper combines the BLP model and the logit mixed logit model of Train (2016) to estimate the distribution of consumer heterogeneity in a flexible and parsimonious way. A Monte Carlo study yields asymptotically normally distributed and consistent estimates of the structural parameters. With access to micro data, the approach allows for the estimation of highly flexible parametric distributions. The estimator further allows to introduce correlations between tastes, yielding more realistic demand patterns without substantially altering the procedure of estimation, making it relevant for practitioners. The BLP estimator is established to yield biased and inconsistent results when the underlying distributional shape is non-normally distributed. An application shows the estimator to perform well on a real world dataset and provides similar estimates as the BLP estimator with the option of specifying consumer heterogeneity as a function of a polynomial, step function or spline, resulting in a flexible estimation procedure.

Nonparametric Estimation of the Random Coefficients Model

Nonparametric Estimation of the Random Coefficients Model
Title Nonparametric Estimation of the Random Coefficients Model PDF eBook
Author Florian Heiss
Publisher
Pages
Release 2019
Genre
ISBN 9783867889575

Download Nonparametric Estimation of the Random Coefficients Model Book in PDF, Epub and Kindle

This paper investigates and extends the computationally attractive nonparametric random coefficients estimator of Fox, Kim, Ryan, and Bajari (2011). We show that their estimator is a special case of the nonnegative LASSO, explaining its sparse nature observed in many applications. Recognizing this link, we extend the estimator, transforming it to a special case of the nonnegative elastic net. The extension improves the estimator's recovery of the true support and allows for more accurate estimates of the random coefficients' distribution. Our estimator is a generalization of the original estimator and therefore, is guaranteed to have a model fit at least as good as the original one. A theoretical analysis of both estimators' properties shows that, under conditions, our generalized estimator approximates the true distribution more accurately. Two Monte Carlo experiments and an application to a travel mode data set illustrate the improved performance of the generalized estimator.

Reliable Estimation of Random Coefficient Logit Demand Models

Reliable Estimation of Random Coefficient Logit Demand Models
Title Reliable Estimation of Random Coefficient Logit Demand Models PDF eBook
Author Daniel Brunner
Publisher
Pages
Release 2017
Genre
ISBN 9783863042660

Download Reliable Estimation of Random Coefficient Logit Demand Models Book in PDF, Epub and Kindle

Nonparametric Identification of Endogenous and Heterogeneous Aggregate Demand Models

Nonparametric Identification of Endogenous and Heterogeneous Aggregate Demand Models
Title Nonparametric Identification of Endogenous and Heterogeneous Aggregate Demand Models PDF eBook
Author Stefan Hoderlein
Publisher
Pages 40
Release 2015
Genre
ISBN

Download Nonparametric Identification of Endogenous and Heterogeneous Aggregate Demand Models Book in PDF, Epub and Kindle

Econometric Models For Industrial Organization

Econometric Models For Industrial Organization
Title Econometric Models For Industrial Organization PDF eBook
Author Matthew Shum
Publisher World Scientific
Pages 154
Release 2016-12-14
Genre Business & Economics
ISBN 981310967X

Download Econometric Models For Industrial Organization Book in PDF, Epub and Kindle

Economic Models for Industrial Organization focuses on the specification and estimation of econometric models for research in industrial organization. In recent decades, empirical work in industrial organization has moved towards dynamic and equilibrium models, involving econometric methods which have features distinct from those used in other areas of applied economics. These lecture notes, aimed for a first or second-year PhD course, motivate and explain these econometric methods, starting from simple models and building to models with the complexity observed in typical research papers. The covered topics include discrete-choice demand analysis, models of dynamic behavior and dynamic games, multiple equilibria in entry games and partial identification, and auction models.

A Simulated Maximum Likelihood Estimator for the Random Coefficient Logit Model Using Aggregate Data

A Simulated Maximum Likelihood Estimator for the Random Coefficient Logit Model Using Aggregate Data
Title A Simulated Maximum Likelihood Estimator for the Random Coefficient Logit Model Using Aggregate Data PDF eBook
Author Sungho Park
Publisher
Pages 38
Release 2008
Genre
ISBN

Download A Simulated Maximum Likelihood Estimator for the Random Coefficient Logit Model Using Aggregate Data Book in PDF, Epub and Kindle

We propose a Simulated Maximum Likelihood estimation method for the random coefficient logit model using aggregate data, accounting for heterogeneity and endogeneity. Our method allows for two sources of randomness in observed market shares - unobserved product characteristics and sampling error. Because of the latter, our method is suitable when sample sizes underlying the shares are finite. By contrast, the commonly used approach of Berry, Levinsohn and Pakes (1995) assumes that observed shares have no sampling error. Our method can be viewed as a generalization of Villas-Boas and Winer (1999) and is closely related to the quot;control functionquot; approach of Petrin and Train (2004). We show that the proposed method provides unbiased and efficient estimates of demand parameters. We also obtain endogeneity test statistics as a by-product, including the direction of endogeneity bias. The model can be extended to incorporate Markov regime-switching dynamics in parameters and is open to other extensions based on Maximum Likelihood. The benefits of the proposed approach are achieved by assuming normality of the unobserved demand attributes, an assumption that imposes constraints on the types of pricing behaviors that are accommodated. However, we find in simulations that demand estimates are fairly robust to violations of these assumptions.