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Characterization of the asymptotic distribution of semiparametric M-estimators

Ichimura, H; Lee, S; (2010) Characterization of the asymptotic distribution of semiparametric M-estimators. Green open access

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Abstract

This paper develops a concrete formula for the asymptotic distribution of two-step, possibly non-smooth semiparametric M-estimators under general misspecification. Our regularity conditions are relatively straightforward to verify and also weaker than those available in the literature. The first-stage nonparametric estimation may depend on finite dimensional parameters. We characterize: (1) conditions under which the first-stage estimation of nonparametric components do not affect the asymptotic distribution, (2) conditions under which the asymptotic distribution is affected by the derivatives of the first-stage nonparametric estimator with respect to the finite-dimensional parameters, and (3) conditions under which one can allow non-smooth objective functions. Our framework is illustrated by applying it to three examples: (1) profiled estimation of a single index quantile regression model, (2) semiparametric least squares estimation under model misspecification, and (3) a smoothed matching estimator. © 2010 Elsevier B.V. All rights reserved.

Type: Report
Title: Characterization of the asymptotic distribution of semiparametric M-estimators
Open access status: An open access version is available from UCL Discovery
DOI: 10.1016/j.jeconom.2010.05.005
UCL classification: UCL
URI: https://discovery.ucl.ac.uk/id/eprint/14678
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