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Combining Unsupervised and Supervised Machine Learning in Analysis of the CHD Patient Database

机译:将无监督和监督机器学习相结合来分析冠心病患者数据库

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The aim of this work is twofold: to illustrate power of unsupervised data analysis approach on routinely collected diagnostic data for coronary heart disease patients and to validate findings against cardiologist's own patient classification and expert analysis. In this respect emphasis in this work is not on prediction and accuracy but rather on discovering paths to extraction of new insights and/or knowledge of the domain. The work demonstrates the use of unsupervised classification for the partitioning of the database with the aim of amplifying predictability of models describing expert classification, as well as boosting cause-and-effect relationships hidden in data.
机译:这项工作的目的是双重的:说明无监督数据分析方法对冠心病患者常规收集的诊断数据的作用,并根据心脏病专家自己的患者分类和专家分析验证结果。在这方面,这项工作的重点不是预测和准确性,而是发现提取新见识和/或领域知识的途径。这项工作演示了如何使用无监督分类对数据库进行分区,目的是扩大描述专家分类的模型的可预测性,以及增强隐藏在数据中的因果关系。

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