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分类树集成在医学决策支持中的最优设置。

On optimal settings of classification tree ensembles for medical decision support.

机构信息

Department of Systems and Computer Networks, Wroclaw University of Technology, Poland.

出版信息

Health Informatics J. 2013 Mar;19(1):3-15. doi: 10.1177/1460458212446096.

Abstract

Pattern recognition and machine learning methods provide an attractive approach for building decision support systems. Classification trees are frequently used algorithms for such tasks owing to their intuitive structure and effectiveness. It has been shown that for complex medical data, combining a number of base classifiers improves their overall accuracy. Classification tree ensembles have a certain number of free parameters to set, which can significantly affect their performance. In recent years such ensembles were often used by practitioners without a mathematical background (e.g. physicians), who may be unaware of how to obtain the optimal settings. Therefore, it is difficult for them to choose the satisfactory properties, while in most of the cases the default parameters proposed for them are not necessarily the most efficient. The aim of this article is to ascertain which types of combined tree classifiers give the best performance for medical decision support and which parameters should be chosen for them. A set of rules for end-users on how to tune their ensembles is proposed.

摘要

模式识别和机器学习方法为构建决策支持系统提供了一种有吸引力的方法。由于其直观的结构和有效性,分类树是此类任务中常用的算法。已经表明,对于复杂的医疗数据,组合多个基础分类器可以提高其整体准确性。分类树集成具有一定数量的自由参数需要设置,这会显著影响它们的性能。近年来,没有数学背景的从业者(例如医生)经常使用这种集成,他们可能不知道如何获得最佳设置。因此,他们很难选择满意的属性,而在大多数情况下,为他们提出的默认参数不一定是最有效的。本文的目的是确定哪种类型的组合树分类器最适合医疗决策支持,以及应该为它们选择哪些参数。提出了一套针对最终用户的规则,用于调整他们的集成。

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