Parrot optimizer: Algorithm & application to medical problem

This paper introduces the Parrot Optimizer (PO), an efficient optimization method
111 Downloads
Updated 10 Apr 2024

View License

Stochastic optimization methods have gained significant prominence as effective techniques in contemporary research, addressing complex optimization challenges efficiently. This paper introduces the Parrot Optimizer (PO), an efficient optimization method inspired by key behaviors observed in trained Pyrrhura Molinae parrots. The study features qualitative analysis and comprehensive experiments to showcase the distinct characteristics of the Parrot Optimizer in handling various optimization problems. Performance evaluation involves benchmarking the proposed PO on 35 functions, encompassing classical cases and problems from the IEEE CEC 2022 test sets, and comparing it with eight popular algorithms. The results vividly highlight the competitive advantages of the PO in terms of its exploratory and exploitative traits. Furthermore, parameter sensitivity experiments explore the adaptability of the proposed PO under varying configurations. The developed PO demonstrates effectiveness and superiority when applied to engineering design problems. To further extend the assessment to real-world applications, we included the application of PO to disease diagnosis and medical image segmentation problems, which are highly relevant and significant in the medical field. In conclusion, the findings substantiate that the PO is a promising and competitive algorithm, surpassing some existing algorithms in the literature. The supplementary files and open-source codes of the proposed parrot optimizer (PO) is available at https://aliasgharheidari.com/PO.html.

Cite As

Lian, Junbo, et al. “Parrot Optimizer: Algorithm and Applications to Medical Problems.” Computers in Biology and Medicine, Elsevier BV, Feb. 2024, p. 108064, doi:10.1016/j.compbiomed.2024.108064.

View more styles
MATLAB Release Compatibility
Created with R2023b
Compatible with any release
Platform Compatibility
Windows macOS Linux

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!
Version Published Release Notes
1.0.6

Version 2 in 10 April 2024 uploaded- run bugs fixed

1.0.5

p

1.0.4

doi

1.0.3

public version

1.0.2

1

1.0.1

version 1

1.0.0