Some Fuzzy Least Squares Estimators for Regression Model Using Different Kernel Functions

Authors

  • Areej Ibrahim Tawfeeq*
  • Emad Hazim Aboudi

DOI:

https://doi.org/10.33095/7qdnc433

Keywords:

Robust fuzzy regression, Fuzzy least squares method, Distance between fuzzy triangular numbers, Kernel functions, Outliers.

Abstract

This paper presents a method for addressing the issue of outliers in fuzzy data. The method involves calculating a new distance between fuzzy numbers using various kernel functions, based on the fuzzy least squares method. The parameters of the fuzzy regression model were estimated in cases where the explanatory variables were non-fuzzy, the parameters were fuzzy, and the response variable was both fuzzy and an outlier. These estimators were then compared to the Fuzzy Least Squares method (FLS) using Mean Square Error (MSE) through simulations with different sample sizes (25, 50, 100, 150) and levels of outliers (0, 0.10, 0.20, 0.30). The results showed that this method, utilizing the new distance, achieved the best results in the presence of outliers.                         

 

Paper type: Research paper.       

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References

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Published

2024-09-06

Issue

Section

Statistical Researches

How to Cite

“Some Fuzzy Least Squares Estimators for Regression Model Using Different Kernel Functions” (2024) Journal of Economics and Administrative Sciences, 30(142), pp. 465–375. doi:10.33095/7qdnc433.

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