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Predictive Analytics Model Based on Multiclass Classification for Asthma Severity by Using Random Forest Algorithm

机译:哮喘严重度的基于多类分类的哮喘严重程度预测分析模型

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In modern life, health status prediction has become very crucial. Big data analysis plays a vital role to predict this perfectly. Asthma is a severe chronic disease with severe symptoms. Asthma disease is a chronic disease that leads to death. Researchers have focused on this for better decision making to predict the disease timely use of predictive analysis. This study proposes a Predictive Analytic Model for Asthma prediction using Random Forest (PAM-RF). Data of patients suffering from Asthma has been trained by a random forest approach which predicts to classify the data. Experiments are performed on Hadoop-spark which predicts the future health state of patients. The proposed approach has attained an accuracy of 98.80 percent to predict the asthma disease.
机译:在现代生活中,健康状况预测已变得至关重要。大数据分析在完美预测这一方面起着至关重要的作用。哮喘是一种具有严重症状的严重慢性疾病。哮喘病是一种导致死亡的慢性疾病。研究人员将重点放在更好的决策上,以便及时使用预测分析来预测疾病。这项研究提出了使用随机森林(PAM-RF)进行哮喘预测的预测分析模型。哮喘患者的数据已通过随机森林方法进行了训练,该方法可预测数据的分类。在Hadoop-spark上进行的实验可以预测患者的未来健康状况。所提出的方法可以预测哮喘病的准确性为98.80%。

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