A Special Multivariate Polynomial Model for Diabetes Prediction and Analysis

Fumin Wang, Jianzhuo Yan, Hongxia Xu
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Abstract

Diabetes is one of the most common diseases worldwide. High level of blood sugar in diabetes patients can harm a large number of the body's system. Early prediction of diabetes can prevent or delay the disease. Various machine learning methods are used to predict diabetes in the past. Researchers usually aim for higher accuracy, the models used become more and more complex and their decision-making process is extremely difficult understood by users. However, explainability of a model is also critical to prediction task in medicine. A model which can enable users to easily understand its decision-making logic while maintaining good accuracy is more likely to be trusted by users. Therefore, we propose a special multivariate polynomial model to predict diabetes. This model has ability to show the relationship between each medical factor and diabetes with some polynomial curves, and the product of these curves and a specific constant is the decision-making process of the model. The experiment results show that our model also has a good accuracy compare with some other methods.
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糖尿病预测与分析的特殊多元多项式模型
糖尿病是世界上最常见的疾病之一。糖尿病患者的高血糖会对身体的许多系统造成伤害。糖尿病的早期预测可以预防或延缓这种疾病。过去,各种机器学习方法被用于预测糖尿病。研究人员通常以更高的精度为目标,使用的模型变得越来越复杂,其决策过程极其难以被用户理解。然而,模型的可解释性对于医学预测任务也是至关重要的。一个既能让用户容易理解其决策逻辑,又能保持良好准确性的模型更容易被用户信任。因此,我们提出了一个特殊的多元多项式模型来预测糖尿病。该模型能够用一些多项式曲线来表示各个医疗因素与糖尿病之间的关系,这些曲线与特定常数的乘积就是模型的决策过程。实验结果表明,与其他方法相比,我们的模型也具有良好的精度。
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