Abstract
In this research, the nonparametric technique has been presented to estimate the time-varying coefficients functions for the longitudinal balanced data that characterized by observations obtained through (n) from the independent subjects, each one of them is measured repeatedly by group of specific time points (m). Although the measurements are independent among the different subjects; they are mostly connected within each subject and the applied techniques is the Local Linear kernel LLPK technique. To avoid the problems of dimensionality, and thick computation, the two-steps method has been used to estimate the coefficients functions by using the two former technique. Since, the two-steps method depends, in estimation, on (OLS) method, which is sensitive for the existence of abnormality in data or contamination of error; robust methods have been proposed such as LAD & M to strengthen the two-steps method towards the abnormality and contamination of error. In this research imitating experiments have been performed, with verifying the performance of the traditional and robust methods for Local Linear kernel LLPK technique by using two criteria, for different sample sizes and disparity levels.
DOI
10.33095/jeas.v19i70.798
Subject Area
Statistical
First Page
297
Last Page
324
Recommended Citation
Rashid, D. H., & Abdel Hafez, A. S. (2013). Robust Two-Step Estimation and Approximation Local Polynomial Kernel for Time-Varying Coefficient Model with Balance Longitudinal Data. Journal of Economics and Administrative Sciences, 19(70), 297-324. https://doi.org/10.33095/jeas.v19i70.798
