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A Novel Diagnostic Approach Based on Support Vector Machine with Linear Kernel for Classifying the Erythemato-Squamous Disease

机译:基于支持向量机和线性核的红斑鳞癌诊断新方法

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The diagnosis of the arythema disease is a real difficulty in dermatology. It causes redness induced in the lower level of the skin by hyperemia of the capillaries. It can harm several skin damages, inflammations. In this paper, we have put our efforts to design a diagnostic approach based on Support Vector Machine (SVM) with linear kernel by classifying the erythemato-squamous disease. SVM being a large margin classifier is a powerful pattern recognition and machine learning methodology that is widely used for both linear and non-linear classification problems. Comparing testing on different kernel methods, we have noticed that our method gives the better accuracy. Choosing the optimal value of the parameters is a crucial criterion and this was achieved by performing 3 fold cross-validations.
机译:在皮肤病学中,风湿病的诊断是一个真正的困难。它会引起毛细血管充血,导致皮肤下层发红。它可以伤害几种皮肤损伤,发炎。在本文中,我们通过对红斑鳞状疾病进行分类,努力设计出基于支持向量机(SVM)和线性核的诊断方法。支持向量机是一种大的边缘分类器,是一种功能强大的模式识别和机器学习方法,已广泛用于线性和非线性分类问题。通过比较不同内核方法的测试,我们注意到我们的方法具有更好的准确性。选择参数的最佳值是至关重要的标准,这是通过执行3倍交叉验证来实现的。

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