A computationally fast estimator for random coefficients logit demand models using aggregate data

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This article proposes a computationally fast estimator for random coefficients logit demand models using aggregate data that Berry, Levinsohn, and Pakes (; hereinafter, BLP) suggest. Our method, which we call approximate BLP (ABLP), is based on a linear approximation of market share functions. The computational advantages of ABLP include (i) the linear approximation enables us to adopt an analytic inversion of the market share equations instead of a numerical inversion that BLP propose, (ii) ABLP solves the market share equations only at the optimum, and (iii) it minimizes over a typically small dimensional parameter space. We show that the ABLP estimator is equivalent to the BLP estimator in large data sets. Our Monte Carlo experiments illustrate that ABLP is faster than other approaches, especially for large data sets.
Publisher
WILEY-BLACKWELL
Issue Date
2015
Language
English
Article Type
Article
Keywords

SEQUENTIAL ESTIMATION; MAXIMUM-LIKELIHOOD; STRUCTURAL MODELS; ALGORITHM

Citation

RAND JOURNAL OF ECONOMICS, v.46, no.1, pp.86 - 102

ISSN
0741-6261
DOI
10.1111/1756-2171.12078
URI
http://hdl.handle.net/10203/195538
Appears in Collection
MT-Journal Papers(저널논문)
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