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Quantile regression for panel data models with fixed effects under random censoring

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Abstract The locally weighted censored quantile regression approach is proposed for panel data models with fixed effects, which allows for random censoring. The resulting estimators are obtained by employing the… Click to show full abstract

Abstract The locally weighted censored quantile regression approach is proposed for panel data models with fixed effects, which allows for random censoring. The resulting estimators are obtained by employing the fixed effects quantile regression method. The weights are selected either parametrically, semi-parametrically or non-parametrically. The large panel data asymptotics are used in an attempt to cope with the incidental parameter problem. The consistency and limiting distribution of the proposed estimator are also derived. The finite sample performance of the proposed estimators are examined via Monte Carlo simulations.

Keywords: panel data; data models; fixed effects; quantile regression

Journal Title: Communications in Statistics - Theory and Methods
Year Published: 2019

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