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Weighted local linear composite quantile estimation for the case of general error distributions
Authors:Jing Sun  Yujie Gai  Lu Lin
Institution:1. Shandong University Qilu Securities Institute for Financial Studies, and School of Mathematics, Shandong University, China;2. School of Economics, Central University of Finance and Economics, China
Abstract:It is known that for nonparametric regression, local linear composite quantile regression (local linear CQR) is a more competitive technique than classical local linear regression since it can significantly improve estimation efficiency under a class of non-normal and symmetric error distributions. However, this method only applies to symmetric errors because, without symmetric condition, the estimation bias is non-negligible and therefore the resulting estimator is inconsistent. In this paper, we propose a weighted local linear CQR method for general error conditions. This method applies to both symmetric and asymmetric random errors. Because of the use of weights, the estimation bias is eliminated asymptotically and the asymptotic normality is established. Furthermore, by minimizing asymptotic variance, the optimal weights are computed and consequently the optimal estimate (the most efficient estimate) is obtained. By comparing relative efficiency theoretically or numerically, we can ensure that the new estimation outperforms the local linear CQR estimation. Finite sample behaviors conducted by simulation studies further illustrate the theoretical findings.
Keywords:Nonparametric regression  Local linear composite quantile regression  Asymmetric distribution  Consistency  Asymptotic efficiency
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