使用支持向量机算法预测心脏中风

Harshita Puri, Jhanavi Chaudhary, Kulkarni Rakshit Raghavendra, Rh Mantri, Kishore Bingi
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引用次数: 6

摘要

本文的重点是建立一个预测模型,利用年龄、高血压、既往心脏病状况、平均血糖水平、BMI和吸烟状况等参数来预测心脏卒中。采用支持向量机(SVM)算法建立预测模型。在此基础上,提出了具有线性、二次、三次决策边界的支持向量机算法。性能预测结果表明,线性支持向量机和二次支持向量机在预测心梗方面表现较好,准确率较高。在训练和测试期间,男性和女性数据库都是如此。
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Prediction of Heart Stroke Using Support Vector Machine Algorithm
This paper focuses on developing a prediction model to predict heart stroke using the parameters, namely, age, hypertension, previous heart disease status, average body glucose level, BMI, and smoking status. The prediction model is developed using a support vector machine (SVM) algorithm. Further, the SVM algorithm with various decision boundaries like linear, quadratic, and cubic are also produced. The performance prediction results show that the linear and quadratic SVM has performed better in predicting the heart stoke with greater accuracy values. This is true for both the male and female databases during training and testing.
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