Detection of Liver disorder using Quadratic Support Vector Machine in comparison with RBF SVM to measure the accuracy, Precision, sensitivity and specificity

M. Madhu, K. R
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引用次数: 3

Abstract

The purpose of this study is to compare the Quadratic SVM classifier’s performance with the RBF SVM method in identifying liver disorders. Techniques and Resources: Three datasets on liver illness that are available in Kaggle contain a total of 31035 samples. These samples are split into two groups: the training dataset (n = 23276; 75% of the total) and the test dataset (n = 7759; 25% of the total). Values for accuracy, precision, specificity, and sensitivity are calculated to estimate the SVM algorithm’s performance. Results: The accuracy, precision, sensitivity, and specificity of the quadratic SVM algorithm were 73.60 percent, 99.89 percent, 73.01 percent, and 96.87 percent, respectively, as opposed to the RBF SVM algorithm’s 73.32 percent, 97.97 percent, 77.27 percent, and 70.08 percent. In this research, it was discovered that the Quadratic SVM algorithm outperformed the RBF SVM algorithm in liver.
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将二次支持向量机与RBF支持向量机进行肝脏疾病检测的准确度、精密度、灵敏度和特异度的比较
本研究的目的是比较二次支持向量机分类器与RBF支持向量机方法在识别肝脏疾病方面的性能。技术和资源:在Kaggle中可获得的三个肝脏疾病数据集共包含31035个样本。这些样本被分成两组:训练数据集(n = 23276;占总数的75%)和测试数据集(n = 7759;占总数的25%)。计算了准确度、精密度、特异性和灵敏度的值,以估计SVM算法的性能。结果:与RBF SVM算法的73.32%、97.97%、77.27%和70.08%相比,二次型SVM算法的准确率、精密度、灵敏度和特异性分别为73.60%、99.89%、73.01%和96.87%。在本研究中,我们发现二次支持向量机算法在肝脏中优于RBF支持向量机算法。
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