Evaluation of Kernel-Based Extreme Learning Machine Performance for Prediction of Chronic Kidney Disease

H. A. Wibawa, I. Malik, N. Bahtiar
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引用次数: 13

Abstract

Chronic Kidney Disease (CKD) prevalence is going to increase year by year. CKD prediction can be used as one of references for further treatment. The success of CKD prediction usually depend on classifier selected. This paper proposes and evaluates Kernel-based Extreme Learning Machine to predict Chronic Kidney Disease. Subsequently, various kernel-based ELM were evaluated. We compared the performance of four kernels-based ELM, namely RBF-ELM, Linear-ELM, Polynomial-ELM, Wavelet-ELM and the performance of standard ELM. The result showed that radial basis function extrem learning machine (RBF -ELM) was higher than those from the other tested and give the best prediction sensitivity and specificity of 99.38% and 100% respectively
基于核的极限学习机在慢性肾脏疾病预测中的性能评价
慢性肾脏疾病(CKD)的患病率呈逐年上升趋势。CKD预测可作为进一步治疗的参考之一。CKD预测的成功与否通常取决于分类器的选择。本文提出并评估了基于核的极限学习机预测慢性肾脏疾病。随后,对各种基于核的ELM进行了评估。我们比较了四种基于核的ELM的性能,即RBF-ELM,线性-ELM,多项式-ELM,小波-ELM和标准ELM的性能。结果表明,径向基函数极值学习机(RBF -ELM)的预测灵敏度和特异度最高,分别为99.38%和100%
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