Novel Hybrid Genetic Arithmetic Optimization for Feature Selection and Classification of Pulmonary Disease Images

S. Nivetha, H. Hannah Inbarani
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Abstract

The difficulty in predicting early cancer is due to the lack of early illness indicators. Metaheuristic approaches are a family of algorithms that seek to find the optimal values for uncertain problems with several implications in optimization and classification problems. An automated system for recognizing illnesses can respond with accuracy, efficiency, and speed, helping medical professionals spot abnormalities and lowering death rates. This study proposes the Novel Hybrid GAO (Genetic Arithmetic Optimization algorithm based Feature Selection) (Genetic Arithmetic Optimization Algorithm-based feature selection) method as a way to choose the features for several machine learning algorithms to classify readily available data on COVID-19 and lung cancer. By choosing just important features, feature selection approaches might improve performance. The proposed approach employs a Genetic and Arithmetic Optimization to enhance the outcomes in an optimization approach.
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基于混合遗传算法的肺部疾病图像特征选择与分类
预测早期癌症的困难是由于缺乏早期疾病指标。元启发式方法是一类寻找不确定问题的最优值的算法,在优化和分类问题中具有多种含义。识别疾病的自动化系统可以准确、高效、快速地做出反应,帮助医疗专业人员发现异常情况,降低死亡率。本研究提出了基于遗传算法优化算法的Feature Selection (Novel Hybrid GAO)方法,作为几种机器学习算法的特征选择方法,用于对COVID-19和肺癌的现成数据进行分类。通过只选择重要的特征,特征选择方法可以提高性能。该方法采用遗传优化和算术优化来提高优化方法的结果。
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来源期刊
International Journal of Sociotechnology and Knowledge Development
International Journal of Sociotechnology and Knowledge Development Decision Sciences-Information Systems and Management
CiteScore
4.20
自引率
0.00%
发文量
35
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