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Earlier Prediction on the heart disease based on supervised machine learning techniques

机译:基于监督机械学习技术的心脏病早期预测

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Heart disease has been a major life threatening problem in a human being. Due to several reasons such as eating habits, lack of exercise, becoming overweight, and smoking and unhealthy lifestyle habits cause's heart diseases. This motivates us to get a clear idea of the risk factors in our life regarding the cause of heart disease. The proposed method suggests the levels of risk factors according the patients data, so that one can take care of their health properly in order to prevent the heart disease. In this research work, proposed methodology is to segregate heart disease patients based on their risk factors. Firstly applying the feature selection, this is to reduce the records of data and to train the model faster. The five classifiers are support vector machine, K-nearest neighbor, decision tree and random forest are applied. After applying the classifiers a proposed model will segregate the heart disease patients based on their risk factors according to age of the patients. This will be helping for the doctors to analyze the risk factors of the patients.
机译:心脏病一直是人类中的主要危及危及问题。由于饮食习惯,缺乏运动,缺乏运动,吸烟和不健康的生活方式习惯导致心脏病的若干原因。这激励我们清楚地了解了我们生命中的风险因素,就心脏病的原因。该方法提出了根据患者数据的风险因素水平,因此可以妥善处理其健康,以防止心脏病。在本研究工作中,提出的方法是根据其风险因素分离心脏病患者。首先应用功能选择,这是为了减少数据的记录并更快地训练模型。五个分类器是支持向量机,k-最近邻,决策树和随机林。在施加分类器之后,拟议的模型将根据患者年龄的危险因素分离心脏病患者。这将有助于医生分析患者的风险因素。

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