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Cardiovascular Dysautonomias Diagnosis Using Crisp and Fuzzy Decision Tree:A Comparative Study

机译:使用清脆和模糊决策树的心血管脱节神经组阴性病毒治疗方法:比较研究

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Decision trees (DTs) are one of the most popular techniques for learning classification systems, especially when it comes to learning from discrete examples. In real world, many data occurred in a fuzzy form. Hence a DT must be able to deal with such fuzzy data. In fact, integrating fuzzy logic when dealing with imprecise and uncertain data allows reducing uncertainty and providing the ability to model fine knowledge details. In this paper, a fuzzy decision tree (FDT) algorithm was applied on a dataset extracted from the ANS (Autonomic Nervous System) unit of the Moroccan university hospital Avicenne. This unit is specialized on performing several dynamic tests to diagnose patients with autonomic disorder and suggest them the appropriate treatment. A set of fuzzy classifiers were generated using FID 3.4. The error rates of the generated FDTs were calculated to measure their performances. Moreover, a comparison between the error rates obtained using crisp and FDTs was carried out and has proved that the results of FDTs were better than those obtained using crisp DTs.
机译:决策树(DTS)是学习分类系统最受欢迎的技术之一,特别是在从离散示例中学习时。在现实世界中,许多数据以模糊形式发生。因此,DT必须能够处理这种模糊数据。事实上,在处理不精确和不确定数据时集成模糊逻辑,允许减少不确定性并提供模拟良好知识细节的能力。在本文中,在摩洛哥大学医院阿维肯的ANS(自主神经系统)单元中提取的数据集上应用了模糊决策树(FDT)算法。本机专门用于进行几种动态测试,以诊断自主主义疾病的患者,并建议他们适当的治疗方法。使用FID 3.4生成一组模糊分类器。计算生成的FDT的误差率以测量其性能。此外,进行了使用清晰和FDT获得的误差率之间的比较,并证明了FDT的结果优于使用CRISP DTS获得的结果。

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