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Evolutionary Jaya Algorithm for Parkinson’s Disease Diagnosis using Multi-objective Feature Selection in Classification

机译:基于分类的多目标特征选择的进化Jaya算法在帕金森病诊断中的应用

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Parkinson’s disease is world’s leading disorder in people aged above 60. It gradually affects the entire body and the brain losses control over the organs. Early detection of Parkinson’s disease can reduce the severity of the disease. Medical diagnosis decision support system (MDDSS) assists medical experts in accurate diagnosis of Parkinson’s disease and can also be useful in telemedicine. Data mining classification algorithms can diagnose Parkinson’s disease with the best possible accuracy when optimal numbers of features are selected. This work proposes a novel algorithm BEJA-V: an evolutionary version of Jaya Algorithm for feature selection in classification using scalarization method of solving multi-objective optimization problems. The continuous Jaya Algorithm is converted into binary encoded Jaya algorithm using V-shaped transformation function. The proposed BEJA-V algorithm improves the classification accuracy and ensures optimal size of features subset.
机译:帕金森氏病是60岁以上人群的世界领先疾病。它逐渐影响了整个身体,影响了大脑对器官的控制。帕金森氏病的早期发现可以减轻疾病的严重程度。医学诊断决策支持系统(MDDSS)可帮助医学专家准确诊断帕金森氏病,并且在远程医疗中也很有用。当选择的功能最佳的数字数据挖掘分类算法可以诊断帕金森用尽可能准确的疾病。这项工作提出了一种新颖的算法BEJA-V:Jaya算法的进化版本,该算法使用解决多目标优化问题的标量方法对分类中的特征进行选择。使用V形变换函数将连续Jaya算法转换为二进制编码的Jaya算法。提出的BEJA-V算法提高了分类精度,并确保了特征子集的最佳大小。

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