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Mining ICDDR,B Hospital Surveillance Data Using Decision Tree Classification Algorithm

机译:基于决策树分类算法的ICDDR,B医院监测数据挖掘

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We use decision tree induction algorithm to generate decision tree models for the ICDDR,B hospital surveillance data. Various preprocessing and formatting activities have been carried out on data at first to make data ready to build the models. Decision rules are generated from those models then. Finally the rules are used to classify patients into three classes: High, Mid, and Low, based on their critical condition so the hospital authority could take prudent actions on critical patients. We use different techniques to generate an optimal decision tree and compare the generated trees with different performance metrics, e.g., accuracy, precision, recall, etc.
机译:我们使用决策树归纳算法为ICDDR,B医院监控数据生成决策树模型。首先,已经对数据进行了各种预处理和格式化活动,以使数据准备好构建模型。然后从这些模型中生成决策规则。最后,根据患者的危急情况,使用规则将患者分为三类:高,中和低,因此医院管理部门可以对危重患者采取审慎的措施。我们使用不同的技术来生成最佳决策树,并将生成的树与不同的性能指标(例如准确性,准确性,召回率等)进行比较。

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