Likelihood Inference on Semiparametric Models: Average Derivative and Treatment Effect
Author(s) -
Matsushita Yukitoshi,
Otsu Taisuke
Publication year - 2018
Publication title -
the japanese economic review
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.205
H-Index - 28
eISSN - 1468-5876
pISSN - 1352-4739
DOI - 10.1111/jere.12167
Subject(s) - jackknife resampling , empirical likelihood , quantile , econometrics , inference , mathematics , semiparametric regression , semiparametric model , statistical inference , statistics , confidence interval , computer science , nonparametric statistics , estimator , artificial intelligence
Over the past few decades, much progress has been made in semiparametric modelling and estimation methods for econometric analysis. This paper is concerned with inference (i.e. confidence intervals and hypothesis testing) in semiparametric models. In contrast to the conventional approach based on t ‐ratios, we advocate likelihood‐based inference. In particular, we study two widely applied semiparametric problems, weighted average derivatives and treatment effects, and propose semiparametric empirical likelihood and jackknife empirical likelihood methods. We derive the limiting behaviour of these empirical likelihood statistics and investigate their finite sample performance through Monte Carlo simulation. Furthermore, we extend the (delete‐1) jackknife empirical likelihood toward the delete‐ d version with growing d and establish general asymptotic theory. This extension is crucial to deal with non‐smooth objects, such as quantiles and quantile average derivatives or treatment effects, due to the well‐known inconsistency phenomena of the jackknife under non‐smoothness.
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