Estimation of BLP models with high-dimensional controls
Hua Jin

TL;DR
This paper develops a new estimation framework for high-dimensional BLP models using machine learning, enabling reliable demand estimation with many product characteristics.
Contribution
It introduces a Neyman orthogonal estimator combined with Lasso techniques for high-dimensional nuisance parameters, achieving $ oot T$-normality even with slow convergence.
Findings
The proposed method achieves $ oot T$-normality for key parameters.
Monte Carlo simulations confirm the estimator's effectiveness in finite samples.
The approach handles approximate sparsity in high-dimensional settings.
Abstract
This study proposes a framework for estimating demand in differentiated product markets with high dimensional product characteristics, building upon the seminal Berry, Levinsohn, and Pakes (1995) model, using market level data. We allow for a very large set of potential product characteristics, where the number of characteristics may exceed the number of market observations. Our contributions are twofold. First, we establish a general estimation theory for BLP models featuring high-dimensional nuisance parameters. We propose a Neyman orthogonal estimator specifically adapted to this framework, utilizing machine learning techniques, such as Lasso, to construct nuisance parameter estimators that are plugged into the Neyman orthogonal estimator. This approach offers a significant advantage: it achieves -asymptotic normality for parameters of interest--such as the price…
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