DDPIS:改进SVM预测糖尿病

Shivani Sharma, Bipin Kumar Rai, Mahak Gupta, Muskan Dinkar
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引用次数: 0

摘要

一种持续时间较长并有持续影响的疾病被称为慢性病。全世界的成年人都死于慢性病。即兴糖尿病疾病预测支持向量机是一个根据输入系统的数据预测糖尿病并根据该数据提供可靠结果的平台。早些时候,该数据集由较少数量的特征组成,这些特征包括患者的医疗细节,这些特征有助于确定患者的健康状况,并且主要集中在妊娠糖尿病上,仅涉及孕妇。在这项工作中,由于这些原因,作者构建了一个比以前的系统更高效的系统。它通过改进支持向量机提供更准确的结果,支持向量机包含更多的数据集,可以预测男性和女性患糖尿病的可能性。
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DDPIS: Diabetes Disease Prediction by Improvising SVM
An illness that lasts longer and has continual repercussions is known as a chronic illness. Adults all across the world die as a result of chronic sickness. Diabetes disease prediction by improvising support vector machine is a platform that predicts diabetes based on the data entered into the system and offers reliable results based on that data. Earlier, the dataset consisted of a smaller number of features comprising the patients' medical details that were useful in determining the patient's health condition and was mainly focused on gestational diabetes, which only deals with pregnant women. In this work, the authors build a system that is more efficient than the previous system because of these reasons. It provides more accurate results by improvising the support vector machine, which includes more datasets and can predict the possibility of diabetes disease in both males and females.
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