Two new feature selection methods based on learn-heuristic techniques for breast cancer prediction: A comprehensive analysis
Kamyab Karimi, Ali Ghodratnama, Reza Tavakkoli-Moghaddam

TL;DR
This paper introduces two novel feature selection methods based on imperialist competitive and bat algorithms to improve breast cancer diagnosis accuracy, achieving over 99% accuracy and reducing dataset dimensions significantly.
Contribution
The study proposes new wrapper-based feature selection techniques using ICA and BA, combined with multiple ML classifiers, and demonstrates their superior performance on breast cancer data.
Findings
Achieved 99.12% accuracy with the BA-based method.
Reduced dataset dimensions by up to 90%.
RF classifier with BA-based feature selection outperformed previous models.
Abstract
Breast cancer is not preventable because of its unknown causes. However, its early diagnosis increases patients' recovery chances. Machine learning (ML) can be utilized to improve treatment outcomes in healthcare operations while diminishing costs and time. In this research, we suggest two novel feature selection (FS) methods based upon an imperialist competitive algorithm (ICA) and a bat algorithm (BA) and their combination with ML algorithms. This study aims to enhance diagnostic models' efficiency and present a comprehensive analysis to help clinical physicians make much more precise and reliable decisions than before. K-nearest neighbors, support vector machine, decision tree, Naive Bayes, AdaBoost, linear discriminant analysis, random forest, logistic regression, and artificial neural network are some of the methods employed. This paper applied a distinctive integration of…
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Taxonomy
MethodsIndependent Component Analysis · Feature Selection
