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Development of Big Data Predictive Analytics Model for Disease Prediction using Machine learning Technique

机译:利用机器学习技术开发疾病预测大数据预测分析模型

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Now days, health prediction in modern life becomesvery much essential. Big data analysis plays a crucial role to predict future status of healthand offerspreeminenthealth outcome to people. Heart disease is a prevalent disease cause's death around the world. A lotof research is going onpredictive analytics using machine learning techniques to reveal better decision making. Big data analysis fosters great opportunities to predict future health status from health parameters and provide best outcomes. WeusedBig Data Predictive Analytics Model for Disease Prediction using Naive Bayes Technique (BPA-NB). It providesprobabilistic classification based on Bayes' theorem with independence assumptions between the features. Naive Bayes approach suitable for huge data sets especially for bigdata. The Naive Bayes approachtrain the heart disease data taken from UCI machine learning repository. Then, it was making predictions on the test data to predict the classification. The results reveal that the proposed BPA-NB scheme providesbetter accuracy about 97.12% to predict the disease rate. The proposed BPA-NB scheme used Hadoop-spark as big data computing tool to obtain significant insight on healthcare data. The experiments are done to predict different patients' future health condition. It takes the training dataset to estimate the health parameters necessary for classification. The results show the early disease detection to figure out future health of patients.
机译:现在几天,现代生活中的健康预测变得非常重要。大数据分析起到预测Healthand的未来状况对人们来说的一个至关重要的作用。心脏病是一种普遍存在的疾病,导致世界上的死亡。利用机器学习技术进行了较好的分析,揭示了更好的决策。大数据分析促进了从健康参数预测未来健康状况的巨大机会,并提供最佳成果。利用幼稚贝叶斯技术(BPA-NB)疾病预测的WeusedBig数据预测分析模型。它基于贝叶斯定理提供了具有独立假设的特征的特征。天真的贝母方法适用于巨大的数据集,尤其是BigData。朴素的贝父接近从UCI机器学习存储库中获取的心脏病数据。然后,它正在对测试数据进行预测,以预测分类。结果表明,建议的BPA-NB方案提供了约97.12%的准确性预测疾病率。所提出的BPA-NB方案使用Hadoop-Spark作为大数据计算工具,以获得对医疗数据的显着洞察力。实验完成以预测不同的患者未来的健康状况。它需要训练数据集来估计分类所需的健康参数。结果表明,早期疾病检测弄清楚未来患者的健康。

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