Shrey Shah, M. Mangla, Nonita Sharma, Tanupriya Choudhury, Maganti Syamala
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引用次数: 0
Abstract
INTRODUCTION: This study compares and contrasts various machine learning algorithms for predicting diabetes. The study of current research work is to analyse the effectiveness of various machine learning algorithms for diabetes prediction.
OBJECTIVES: To compare the efficacy of various machine learning algorithms for diabetic prediction.
METHODS: For the same, a diabetic dataset was subjected to the application of various well-known machine learning algorithms. Unbalanced data was handled by pre-processing the dataset. The models were subsequently trained and assessed using different performance metrics namely F1-score, accuracy, sensitivity, and specificity.
RESULTS: The experimental results show that the Decision Tree and ensemble model outperforms all other comparative models in terms of accuracy and other evaluation metrics.
CONCLUSION: This study can help healthcare practitioners and researchers to choose the best machine learning model for diabetes prediction based on their specific needs and available data.
简介:本研究对预测糖尿病的各种机器学习算法进行了比较和对比。当前研究工作的目的是分析各种机器学习算法在预测糖尿病方面的有效性。目标比较各种机器学习算法在预测糖尿病方面的功效。方法:为此,对一个糖尿病数据集采用了各种著名的机器学习算法。通过预处理数据集来处理不平衡数据。随后对模型进行训练,并使用不同的性能指标(即 F1 分数、准确率、灵敏度和特异性)进行评估。结果:实验结果表明,决策树和集合模型在准确率和其他评估指标方面优于所有其他比较模型。结论:这项研究可以帮助医疗从业人员和研究人员根据自己的具体需求和可用数据,为糖尿病预测选择最佳的机器学习模型。