Kernel semi-parametric model improvement based on quasi-oppositional learning pelican optimization algorithm

Statistical modeling is essential in many scientific research areas because it explains the relationship between the response variable of interest and a number of explanatory variables. However, it is not easy to determine the optimal model beforehand. Therefore, in this paper, we look at how to cho...

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Bibliographic Details
Published in:Iraqi Journal for Computer Science and Mathematics Vol. 4; no. 2
Main Authors: Zakariya Algamal, Firas AL-Taie, Omar Qasim
Format: Journal Article
Language:English
Published: College of Education, Al-Iraqia University 20-04-2023
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Summary:Statistical modeling is essential in many scientific research areas because it explains the relationship between the response variable of interest and a number of explanatory variables. However, it is not easy to determine the optimal model beforehand. Therefore, in this paper, we look at how to choose a hyper-parameter in a kernel semi-parametric regression model. A quasi-oppositional learning pelican optimization algorithm strategy is used to select the smoothness parameter. In comparison to other competitor approaches, simulation results revealed that the suggested method, the quasi-oppositional learning pelican optimization algorithm, is superior in terms of MSE. The experimental findings and statistical analysis show that when compared to the CV and GCV, our proposed quasi-oppositional learning pelican optimization algorithm provides greater performance in terms of computational time.
ISSN:2958-0544
2788-7421
DOI:10.52866/ijcsm.2023.02.02.013