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Classification and Feature Selection Method for Medical Datasets by Brain Storm Optimization Algorithm and Support Vector Machine

机译:基于头脑风暴优化算法和支持向量机的医学数据集分类与特征选择方法

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Medicine is one of the sciences where development of computer science enables a lot of improvements. Usage of computers in medicine increases the accuracy and speeds up processes of data analysis and setting the diagnoses. Nowadays, numerous computer aided diagnostic systems exist and machine learning algorithms have significant role in them. Faster and more accurate systems are necessary. Common machine learning task that is part of computer aided diagnostic systems and different medical data analytic software packages is classification. In order to obtain better classification accuracy it is important to choose feature set and proper parameters for the classification model. Medical datasets often have large feature sets where many features are in correlation with others thus it is important to reduce the feature set. In this paper we propose adjusted brain storm optimization algorithm for feature selection in medical datasets. Classification was done by support vector machine where its parameters are optimized also by brain storm optimization algorithm. The proposed method is tested on standard publicly available medical datasets and compared to other state-of-the-art methods. By analyzing the obtained results it was shown that the proposed method achieves higher accuracy and reduce the number of feature needed.
机译:医学是计算机科学发展可以带来很多进步的一门科学。在医学中使用计算机可以提高准确性,并加快数据分析和设置诊断的过程。如今,存在许多计算机辅助诊断系统,并且机器学习算法在其中发挥着重要作用。需要更快,更准确的系统。分类是计算机辅助诊断系统和不同医学数据分析软件包的一部分,它是常见的机器学习任务。为了获得更好的分类精度,为分类模型选择特征集和适当的参数很重要。医学数据集通常具有大型特征集,其中许多特征与其他特征相关,因此减少特征集非常重要。在本文中,我们提出了用于医学数据集特征选择的调整后的头脑风暴优化算法。通过支持向量机进行分类,其中的参数也通过头脑风暴优化算法进行优化。所提出的方法已在标准的公开医疗数据集上进行了测试,并与其他最新方法进行了比较。通过对获得的结果进行分析,结果表明所提出的方法具有较高的精度,并减少了所需特征的数量。

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