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Empirical Study to Evaluate the Performance of Classification Algorithms on Healthcare Datasets

机译:评价医疗数据集分类算法性能的实证研究

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Healthcare is a rapidly growing industry in both developed and developing countries. The expanse of technology has facilitated the storage and analysis of the diverse data which the healthcare industry generates. Data mining algorithms have been employed in the health care industry for the past few years for diverse kind of decision making and predictive analysis related tasks. Classification algorithms have been widely used for early detection of disease symptoms among patients. However, the selection of a suitable classifier for a particular dataset is an important problem in various healthcare related problems. This paper puts forward an empirical comparison of five important classifiers built using decision trees, bayesian learning, support vector machines and ensemble learning on twelve UCI healthcare datasets. The experimental results are examined from multiple perspectives, namely accuracy, precision, recall and F-measure.
机译:在发达国家和发展中国家,医疗保健都是一个快速发展的行业。技术的发展促进了医疗行业产生的各种数据的存储和分析。过去几年中,数据挖掘算法已用于医疗保健行业,用于与决策和预测分析相关的各种任务。分类算法已被广泛用于患者中疾病症状的早期检测。但是,在各种与医疗保健相关的问题中,为特定数据集选择合适的分类器是一个重要问题。本文提出了使用决策树,贝叶斯学习,支持向量机和集成学习对12个UCI医疗数据集构建的五个重要分类器的经验比较。从准确性,准确性,召回率和F值等多个角度检查了实验结果。

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