- Hacettepe Journal of Mathematics and Statistics
- Volume:46 Issue:4
- Linear penalized spline model estimation using ranked set sampling technique
Linear penalized spline model estimation using ranked set sampling technique
Authors : M. AL KADİRİ
Pages : 669-683
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Publication Date : 2017-08-01
Article Type : Research Paper
Abstract :Benefits of using Ranked Set Sampling insert ignore into journalissuearticles values(RSS); rather than Simple Random Sampling insert ignore into journalissuearticles values(SRS); are indeed significant when estimating population mean or estimating linear models. Significance of this sampling method clearly appears since it can increase efficiency of the estimated parameters and decrease sampling costs. This paper investigates and introduces RSS method to fit spline and penalized spline models parametrically. It shows that the estimated parameters using RSS are more efficient than the estimated parameters using SRS for both spline and penalized spline models. The superiority of RSS approach is demonstrated using a simulation study as well as the `Air pollution` environmental real data study. The approach in this paper can be illustrated for general smoothing spline models; for example B-spline,Radial spline etc, straightforwardly.Keywords : Penalized generalized least square method, Ranked Set Sampling, Mallow criterion, efficiency