mMGO for Brain Stroke Classification

Joint Opposite Selection enhanced Mountain Gazelle Optimizer for Brain Stroke Classification
70 Downloads
Updated 11 Jan 2024

View License

A new meta-heuristic algorithm called the Mountain Gazelle Optimizer (MGO) was developed in part as a result of wild mountain gazelles' social structure but suffered from slow convergence speed. Consequently, a modified MGO (mMGO) approach uses the Joint Opposite Selection (JOS) operator, which combines the Selective Leading Opposition (SLO) and the Dynamic Opposite Learning (DO) approaches, to improve MGO. The purpose of this study is to evaluate the performance of mMGO based on the k-Nearest Neighbor (kNN) classifier in predicting brain stroke in data sets taken from Kaggle. Performance was assessed on the challenging CEC 2020 benchmark test functions. Compared to seven well-known optimization algorithms, the statistical results demonstrated the superiority of mMGO. Furthermore, the experimental results of mMGO-kNN for categorizing brain stroke data sets revealed that it outperformed competitors in all data sets with an overall accuracy of 95.5\%, a sensitivity of 99.34\%, a specificity of 98.99\%, and a precision of 99.21\%.

Cite As

Prof. Dr. Essam H Houssein (2024). mMGO for Brain Stroke Classification (https://www.mathworks.com/matlabcentral/fileexchange/157441-mmgo-for-brain-stroke-classification), MATLAB Central File Exchange. Retrieved .

MATLAB Release Compatibility
Created with R2023b
Compatible with any release
Platform Compatibility
Windows macOS Linux
Categories
Find more on Neuroscience in Help Center and MATLAB Answers
Tags Add Tags

Community Treasure Hunt

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

Start Hunting!
Version Published Release Notes
1.0.0