Robust Estimation OF The Partial Regression Model Using Wavelet Thresholding

Authors

  • Ekhlass Abdulameer Al-Azzawi
  • Lekaa Ali Al-Always

DOI:

https://doi.org/10.33095/jeas.v28i133.2352

Keywords:

Partial linear regression, Outliers, Robustness , Wavelet thresholding, Spek man , Nadarya-Watson

Abstract

            Semi-parametric regression models have been studied in a variety of applications and scientific fields due to their high flexibility in dealing with data that has problems, as they are characterized by the ease of interpretation of the parameter part while retaining the flexibility of the non-parametric part. The response variable or explanatory variables can have outliers, and the OLS approach have the sensitivity to outliers. To address this issue, robust (resistance) methods were used, which are less sensitive in the presence of outlier values in the data. This study aims to estimate the partial regression model using the robust estimation method with the wavelet threshold and the PLM estimation method with the Speakman estimation and Nadarya-Watson smoothing, using simulation experiments at different sample sizes and contaminated ratios.

     The mean square error criterion was employed to compare the two methods. The robust method is more efficient in obtaining robust estimators than the PLM estimation method

Downloads

Download data is not yet available.

Published

2022-09-30

Issue

Section

Statistical Researches

How to Cite

Al-Azzawi, E.A. and Al-Always, L.A. (2022) “Robust Estimation OF The Partial Regression Model Using Wavelet Thresholding”, Journal of Economics and Administrative Sciences, 28(133), pp. 97–113. doi:10.33095/jeas.v28i133.2352.

Similar Articles

1-10 of 887

You may also start an advanced similarity search for this article.