首页 | 本学科首页   官方微博 | 高级检索  
     检索      


Robust signed-rank estimation and variable selection for semi-parametric additive partial linear models
Authors:Brice M Nguelifack  Isabelle Kemajou-Brown
Institution:aDepartment of Mathematics, United States Naval Academy, Annapolis, MD, USA;bDepartment of Mathematics, Morgan State University, Baltimore, MD, USA
Abstract:A fully nonparametric model may not perform well or when the researcher wants to use a parametric model but the functional form with respect to a subset of the regressors or the density of the errors is not known. This becomes even more challenging when the data contain gross outliers or unusual observations. However, in practice the true covariates are not known in advance, nor is the smoothness of the functional form. A robust model selection approach through which we can choose the relevant covariates components and estimate the smoothing function may represent an appealing tool to the solution. A weighted signed-rank estimation and variable selection under the adaptive lasso for semi-parametric partial additive models is considered in this paper. B-spline is used to estimate the unknown additive nonparametric function. It is shown that despite using B-spline to estimate the unknown additive nonparametric function, the proposed estimator has an oracle property. The robustness of the weighted signed-rank approach for data with heavy-tail, contaminated errors, and data containing high-leverage points are validated via finite sample simulations. A practical application to an economic study is provided using an updated Canadian household gasoline consumption data.
Keywords:Adaptive lasso  asymptotic theory  model selection/variable selection  nonparametric/semi-parametric statistics
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号