Diabetes prediction using ensemble perceptron algorithm

Roxana Mirshahvalad, Nastaran Asadi Zanjani
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引用次数: 25

Abstract

Today, people's new way of life leads their eating habits towards fast-foods and ready-to-use products more than before. These foods contain large amounts of sugar and fat, which increase the number of people at risk of diabetes. Many people are required to get diabetes diagnosis by various blood tests regularly. These tests bring significant amounts of cost and take facilities and time when it comes to a large number of people. Machine learning algorithms can be used as computer aided systems to predict if a person is highly probable to have diabetes or not, in order to reduce huge number of people who require to take diagnosis blood tests, to save time and money. In this study, we proposed a learning algorithm which ensemble boosting algorithm with perceptron algorithm to improve performance of perceptron algorithm in prediction of undiagnosed patients. Proposed method is tested on three different publicly available datasets and compared with performance of perceptron algorithm. The results show that proposed algorithm outperform perceptron algorithm on average AUC basis.
基于集成感知器算法的糖尿病预测
如今,人们的新生活方式使他们的饮食习惯比以前更多地转向快餐和即食产品。这些食物含有大量的糖和脂肪,增加了患糖尿病的风险。许多人需要定期通过各种血液检查来诊断糖尿病。当涉及到大量的人时,这些测试带来了大量的成本和设备和时间。机器学习算法可以用作计算机辅助系统来预测一个人是否极有可能患有糖尿病,以减少需要进行诊断血液检查的人数,节省时间和金钱。在本研究中,我们提出了一种将增强算法与感知器算法集成的学习算法,以提高感知器算法在未诊断患者预测中的性能。在三个不同的公开数据集上对该方法进行了测试,并与感知器算法的性能进行了比较。结果表明,该算法在平均AUC基础上优于感知器算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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