Empirical likelihood based inference for a categorical varying-coefficient panel data model with fixed effects
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2019-09Derechos
© 2019. This manuscript version is made available under the CC-BY-NC-ND 4.0 license
Publicado en
Journal of Multivariate Analysis
Volume 173, September 2019, Pages 110-124
Editorial
Academic Press Inc.
Palabras clave
Categorical varying-coefficient panel data model
Discrete varying-coefficient panel data model
Fixed effects
Empirical likelihood inference
Nonparametric regression analysis
Resumen/Abstract
ABSTRACT: In this paper local empirical likelihood-based inference for nonparametric categorical varying coefficient panel data models with fixed effects under cross-sectional dependence is investigated. First, we show that the naive empirical likelihood ratio is asymptotically standard chi-squared using a nonparametric version of Wilks? theorem. The ratio is self-scale invariant and the plug-in estimate of the limiting variance is not needed. As a by product, we propose also an empirical maximum likelihood estimator of the categorical varying coefficient model and we obtain the asymptotic distribution of this estimator. We also illustrated the proposed technique in an application that reports estimates of strike activities from 17 OECD countries for the period 1951-85.
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