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Comparative Study of Classifier for Chronic Kidney Disease prediction using Naive Bayes, KNN and Random Forest

机译:朴素贝叶斯,KNN和随机森林预测慢性肾脏病分类器的比较研究

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Chronic kidney disease (CKD), is also known as chronic nephritic sickness. It defines constrains which affects your kidneys and reduces your potential to stay healthy. There will be various complication concerns like increased levels in your blood, anemia (low blood count), weak bones, and nerve injury. Detection and treatment should be done prior so it will typically keep chronic uropathy from obtaining a worse condition. Data processing is the term used for information discovery from big databases. The task of knowledge mining is to generate regular patterns from historical data and emphasize future conclusions, follows from the convergence of many recent trends: the decreased value of huge knowledge storage devices and therefore the tremendous ease of aggregation knowledge over networks; the development of robust and economical machine learning algorithms to method this data; and therefore the decrease value of machine power, enabling use of computationally intensive strategies for knowledge analysis. Machine learning is an important task as it benefits many applications such as analyzing life science outcomes, sleuthing fraud, sleuthing faux users etc. varied knowledge mining classification approaches and machine learning algorithms are applied for prediction of chronic diseases. Therefore, this paper examines the performance of Naive Bayes, K-Nearest Neighbour (KNN) and Random Forest classifier on the basis of its accuracy, preciseness and execution time for CKD prediction. Finally, the outcome after conducted research is that the performance of Random Forest classifier is finest than Naive Bayes and KNN.
机译:慢性肾脏病(CKD),也称为慢性肾病。它定义了会影响肾脏并减少保持健康潜力的约束。会出现各种并发症,例如血液中的血脂水平升高,贫血(血液计数低),骨骼脆弱和神经损伤。应事先进行检测和治疗,这样通常可以防止慢性尿毒症恶化。数据处理是用于从大型数据库中发现信息的术语。知识挖掘的任务是从历史数据中生成规律的模式并强调未来的结论,这要归功于许多最新趋势的融合:巨大的知识存储设备的价值下降,因此极大地简化了网络上知识的聚合;开发强大且经济的机器学习算法来处理这些数据;从而降低了机器功率,从而可以将计算密集型策略用于知识分析。机器学习是一项重要任务,因为它有益于许多应用程序,例如分析生命科学成果,侦查欺诈,侦查虚假用户等。各种知识挖掘分类方法和机器学习算法可用于预测慢性病。因此,本文基于CKD预测的准确性,准确性和执行时间,研究了朴素贝叶斯,K最近邻(KNN)和随机森林分类器的性能。最后,进行研究后得出的结果是,随机森林分类器的性能优于朴素贝叶斯和KNN。

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