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Feature Selection and Ensemble Entropy Attribute Weighted Deep Neural Network (EEAw-DNN) for Chronic Kidney Disease (CKD) Prediction

机译:特征选择和集合熵属性加权深神经网络(EEAW-DNN)用于慢性肾病(CKD)预测

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Initial prediction and appropriate medication are the ways to cure Chronic Kidney Disease (CKD) in the early stage of progression. The rate of accuracy in the classification algorithms focuses on the usage of exact algorithms used to select he features in order to minimize the dataset dimensions. The accuracy not only relies on the feature selection algorithms but also on the methods of classification, where it predicts the severities that are useful for the medical experts in the field of clinical diagnosis. To minimize the time for computation and to maximize the classifiers accuracy level, the proposed study, Ensemble Entropy Attribute Weighted Deep Neural Network (EEAw-DNN) classification was aided to predict Chronic Kidney Disease. The rate of accuracy of the EEAw-DNN is surveyed with the help of feature selection using data reduction. Hence Hybrid Filter Wrapper Embedded (HFWE) based Feature Selection (FS) is formulated to choose the optimal subset of features from CKD set of data. This HFWE-FS technique fuses algorithm with filter, wrapper and embedded algorithm. At last, EEAw-DNNbased algorithm used for prediction is used to diagnose CKD. The database used for the study is "CKD" which is implemented using MATLAB platform. The outputs prove that the EEAw-DNNclassifier combined with HFWE algorithm renders greater level of prediction when correlated to other few classification algorithms like Na?ve Bayes (NB), Artificial Neural Network (ANN) and Support Vector Machine (SVM) in the prediction of severity of CKD. Datasets were taken from University of California Irvine (UCI) machine learning repository.
机译:初始预测和适当的药物是治愈慢性肾病(CKD)在进展的早期患者的方法。分类算法中的精度率​​侧重于用于选择他的功能的精确算法,以便最小化数据集维度。准确性不仅依赖于特征选择算法,而且还依赖于分类方法,其中预测临床诊断领域的医学专家有用的严重性。为了最大限度地减少计算的时​​间和最大化分类器精度水平,所提出的研究,集合熵属性加权深神经网络(EEAW-DNN)分类被促进预测慢性肾病。使用数据减少的特征选择,通过特征选择来调查EEAW-DNN的准确度。因此,基于混合滤波器包装器(HFWE)的特征选择(FS)被配制成从CKD数据集中选择最佳特征子集。该HFWE-FS技术用滤波器,包装器和嵌入算法保险丝算法。最后,用于预测的EEAW-DNNABASED算法用于诊断CKD。用于该研究的数据库是使用MATLAB平台实现的“CKD”。输出证明,当与Na ve贝叶斯(NB),人工神经网络(ANN)等其他分类算法相关时,EEAW-DNNCLAssifer与HFWE算法相结合的预测水平呈现更大的预测。在预测中的支持矢量机(SVM)中的其他分类算法CKD的严重程度。数据集是由加州大学欧文(UCI)机器学习存储库中的。

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