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Identification of Diabetes Disease from Human Blood Using Machine Learning Techniques

机译:利用机器学习技术鉴定人血糖尿病疾病

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Diabetes among one of the most common diseases occurs in human beings due to imbalance of insulin level in blood. The early detection of diabetes is very necessary as it can affect many internal parts and immune system of human body silently. In this paper, we are comparing various machine learning and neural network based approaches that are applied on publically available datasets. Here, we have used two datasets for experiments 1st dataset is UCI dataset and other is PIMA Indian dataset then we have performed lots of experiments using different machine learning classifiers and neural network models to observe the performance of each classifier. After experiments, the highest accuracy of identification obtained from decision tree method which is 99.8% for dataset1 and for dataset 2 the highest accuracy was obtained from back propagation neural network model which is 80.8 %.
机译:由于血液中胰岛素水平的失衡,在人类中发生糖尿病之一。早期发现糖尿病是非常必要的,因为它可以静默地影响人体的许多内部部件和免疫系统。在本文中,我们正在比较应用于公开的数据集的各种机器学习和基于神经网络的方法。在这里,我们使用了两个数据集进行实验1 st DataSet是UCI DataSet,其他是PIMA Indian DataSet,然后我们使用不同的机器学习分类器和神经网络模型进行了大量的实验,以观察每个分类器的性能。实验后,从决策树方法获得的最高精度为DataSet1和数据集2的99.8%,从后传播神经网络模型获得最高精度,这是80.8%。

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