NONLINEAR REGRESSION PARAMETER ESTIMATES USING GENETIC ALGORITHMS

Authors

  • B Onoghojobi Department of Statistics, Federal University Lokoja, Nigeria Author
  • N. P Olewuezi Federal University of Technology, Owerri Author
  • O Omojarabi Department of Statistics, Federal University Lokoja, Nigeria Author

Keywords:

Local optimal, Optimal estimates, Levenberg – Marquadt, Gauss Newton

Abstract

Deterministic algorithm such as Gauss Newton and Levenberg - Marquadt are still well established practice for obtaining optimal estimates in nonlinear regression. These methods however, have certain pitfalls of multiple local optimal, non-invertibility, differentiability that results to misleading estimates. Under these circumstances, this study is aimed at using optimization techniques in obtaining optimal estimates of complex nonlinear regression model. We investigated the effectiveness and simplicity of particle swarm optimization and genetic algorithm on five (5) test-bed problems obtained from the National Institute of Standards and
Technology (NIST) website. R codes were developed for each model. Each algorithm was tried ten (10) times for each model for at least 100 iterations. The results obtained were displayed on tables and graphs. Particle Swarm Optimization and Genetic Algorithms proved to be efficient, robust and can be considered reliable in obtaining the parameter estimates for Nonlinear Regression Model.

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References

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Published

2023-08-01

How to Cite

NONLINEAR REGRESSION PARAMETER ESTIMATES USING GENETIC ALGORITHMS. (2023). The Journals of the Nigerian Association of Mathematical Physics, 65, 173 – 178. https://nampjournals.org.ng/index.php/home/article/view/48

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