基于支持向量机和人工神经网络的糖尿病诊断

Shreya Aliwadi, Vrinda Shandila, Tanisha Gahlawat, Parul Kalra, D. Mehrotra
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引用次数: 4

摘要

本文通过与支持向量机(SVM)的比较,探讨了支持向量机与人工神经网络系统的混合,作为计算糖尿病患者本质的最佳二分类系统。在这项研究中,描述一个人的糖尿病性质的所有参数的集合是从实验室。选择这种方法是为了更好地学习各种问题。检测结果与公认的结果一致,与医生的直接诊断相似。研究结果表明,这种支持向量机与人工神经网络(ANN)混合模型比支持向量机模型更精确。这些结果表明,支持向量机和人工神经网络混合模型对于糖尿病和非糖尿病患者的分类是非常有效的。本文强调了支持向量机的概念及其与人工神经网络的集成,两个关键特征之一是支持向量机模型的泛化理论,它最好地描述了如何选择一个假设和Kernel给出的函数,它引入了非线性的思想,而不包含实际的算法。
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Diagnosis of diabetic nature of a person using SVM and ANN approach
The paper explores the hybrid of SVM and system of Artificial Neural Network as the finest binary classification system for calculating the diabetic nature of people in comparison to Support Vector Machine (SVM). In this research, the sets of all the parameters describing the diabetic nature of a person are taken from the laboratories. This approach is chosen so that a better learning method can be used for various problems. The testing results were found to be in accordance with the accepted results that resemble with the direct diagnosis of a physician. The results of this research shows that this hybrid SVM and Artificial Neural Network (ANN) model is more precise than the SVM model. These results of the hybrid SVM and ANN model suggest that it is very effective for the classification of Diabetic and Non Diabetic nature of a person. This paper highlights the concept of Support Vector Machines and its integration with Artificial Neural Network, the two key characteristics with one being the generalization theory of the SVM model that best describes how to select a hypothesis and functions given by Kernel that introduces the idea of non-linearity without the inclusion of the actual algorithm.
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