Stacked Ensemble-Based Type-2 Diabetes Prediction Using Machine Learning Techniques

M. Rahim, Md Alfaz Hossain, Md. Najmul Hossain, Jungpil Shin, K. Yun
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Abstract

Diabetes is a long-term disease caused by the human body's inability to make enough insulin or to use it properly. This is one of the curses of the present world. Although it is not very severe in the initial stage, over time, it takes a deadly shape and gradually affects a variety of human organs, such as the heart, kidney, liver, eyes, and brain, leading to death. Many researchers focus on the machine and in-depth learning strategies to efficiently predict diabetes based on numerous risk variables such as insulin, BMI, and glucose in this healthcare issue. We proposed a robust approach based on the stacked ensemble method for predicting diabetes using several machine learning (ML) methods. The stacked ensemble comprises two models: the base model and the meta-model. Base models use a variety of models of ML, such as Support Vector Machine (SVM), K Nearest Neighbor (KNN), Naïve Bayes (NB), and Random Forest (RF), which make different assumptions about predictions, and meta-models make final predictions using Logistic Regression from predictive outputs from base models. To assess the efficiency of the proposed model, we have considered the PIMA Indian Diabetes Dataset (PIMA-IDD). We used linear and stratified sampling to ensure dataset consistency and K-fold cross-validation to prevent model overfitting. Experiments revealed that the proposed stacked ensemble model outperformed the model specified in the base classifier as well as the comprehensive methods, with an accuracy of 94.17%.
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使用机器学习技术的基于堆叠集成的2型糖尿病预测
糖尿病是一种长期疾病,由人体无法制造足够的胰岛素或正确使用胰岛素引起。这是当今世界的诅咒之一。虽然在最初阶段不是很严重,但随着时间的推移,它会形成致命的形状,并逐渐影响人体的各种器官,如心脏、肾脏、肝脏、眼睛和大脑,导致死亡。许多研究人员专注于机器和深度学习策略,以根据胰岛素、BMI和葡萄糖等众多风险变量有效预测糖尿病。我们提出了一种基于堆叠集成方法的稳健方法,用于使用几种机器学习(ML)方法预测糖尿病。堆叠集成包括两个模型:基本模型和元模型。基本模型使用各种ML模型,如支持向量机(SVM)、K近邻(KNN)、朴素贝叶斯(NB)和随机森林(RF),它们对预测做出不同的假设,元模型使用逻辑回归从基本模型的预测输出中做出最终预测。为了评估所提出的模型的效率,我们考虑了PIMA印度糖尿病数据集(PIMA-IDD)。我们使用线性和分层采样来确保数据集的一致性,并使用K-fold交叉验证来防止模型过拟合。实验表明,所提出的堆叠集成模型优于基本分类器中指定的模型以及综合方法,准确率为94.17%。
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来源期刊
Annals of Emerging Technologies in Computing
Annals of Emerging Technologies in Computing Computer Science-Computer Science (all)
CiteScore
3.50
自引率
0.00%
发文量
26
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