Diabetes Risk Prediction Using Extreme Gradient Boosting (XGBoost)

Kartina Diah Kesuma Wardhani, Memen Akbar
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引用次数: 3

Abstract

One of the uses of medical data from diabetes patients is to produce models that can be used by medical personnel to predict and identify diabetes in patients. Various techniques are used to be able to provide a diabetes model as early as possible based on the symptoms experienced by diabetic patients, including using machine learning. The machine learning technique used to predict diabetes in this study is extreme gradient boosting (XGBoost). XGBoost is an advanced implementation of gradient boosting along with multiple regularization factors to accurately predict target variables by combining simpler and weaker model set estimations. Errors made by the previous model are tried to be corrected by the next model by adding some weight to the model. The diabetes prediction model using XGBoost is shown in the form of a tree, with the accuracy of the model produced in this study of 98.71%
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利用极限梯度增强(XGBoost)预测糖尿病风险
来自糖尿病患者的医疗数据的用途之一是产生可供医务人员用于预测和识别糖尿病患者的模型。为了能够根据糖尿病患者所经历的症状尽早提供糖尿病模型,使用了各种技术,包括使用机器学习。在这项研究中,用于预测糖尿病的机器学习技术是极端梯度增强(XGBoost)。XGBoost是一种梯度增强的高级实现,结合多个正则化因子,通过结合更简单和更弱的模型集估计来准确预测目标变量。前一个模型所犯的错误试图由下一个模型通过给模型增加一些权重来纠正。利用XGBoost建立的糖尿病预测模型呈树形,本研究建立的模型准确率为98.71%
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审稿时长
12 weeks
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