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Efficient Binary Classifier for Prediction of Diabetes Using Data Preprocessing and Support Vector Machine

机译:使用数据预处理和支持向量机预测糖尿病的高效二进制分类器

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Diabetes offer a sea of opportunity to build classifier as wealth of patient data is available in public domain. It is a disease which affects the vast population and hence cost a great deal of money. It spreads over the years to the other organs in body thus make its impact lethal. Thus, the physicians are interested in early and accurate detection of diabetes. This paper presents an efficient binary classifier for detection of diabetes using data preprocessing and Support Vector Machine (SVM). In this study, attribute evaluator and the best first search is used for reducing the number of features. The dimension of the input feature is reduced from eight to three. The dataset used is Pima diabetic dataset from UCI repository. The substantial increase is noted in accuracy by using the data pre processing.
机译:糖尿病提供一个机会海洋,以构建分类器,因为在公共领域有丰富的患者数据。这是一种影响庞大人口的疾病,因此花费了很多钱。这几年来蔓延到身体的其他器官,从而使其影响致命。因此,医生对早期和准确地检测糖尿病感兴趣。本文介绍了一种有效的二进制分类器,用于使用数据预处理和支持向量机(SVM)检测糖尿病。在本研究中,属性评估器和最佳的第一个搜索用于减少功能的数量。输入功能的尺寸从8到三个减少。使用的数据集是UCI存储库的PIMA糖尿病数据集。通过使用数据预处理,通过准确性提高了大幅增加。

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