The influence function of semiparametric estimators
Hidehiko Ichimura and
Whitney K. Newey
No 44/15, CeMMAP working papers from Institute for Fiscal Studies
Abstract:
Often semiparametric estimators are asymptotically equivalent to a sample average. The object being averaged is referred to as the influence function. The influence function is useful in formulating primitive regularity conditions for asymptotic normality, in efficiency comparions, for bias reduction, and for analyzing robustness. We show that the influence function of a semiparametric estimator can be calculated as the limit of the Gateaux derivative of a parameter with respect to a smooth deviation as the deviation approaches a point mass. We also consider high level and primitive regularity conditions for validity of the influence function calculation. The conditions involve Frechet differentiability, nonparametric convergence rates, stochastic equicontinuity, and small bias conditions. We apply these results to examples.
Date: 2015-08-07
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Working Paper: The influence function of semiparametric estimators (2017)
Working Paper: The influence function of semiparametric estimators (2017)
Working Paper: The influence function of semiparametric estimators (2015)
Working Paper: The Influence Function of Semiparametric Estimators (2015)
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Persistent link: https://EconPapers.repec.org/RePEc:azt:cemmap:44/15
DOI: 10.1920/wp.cem.2015.4415
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