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Decision Trees and Their Families in Imbalanced Pattern Recognition: Recognition with and without Rejection

机译:不平衡模式识别中的决策树及其家族:带或不带拒绝的识别

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Decision trees are considered to be among the best classifiers. In this work we use decision trees and its families to the problem of imbalanced data recognition. Considered are aspects of recognition without rejection and with rejection: it is assumed that all recognized elements belong to desired classes in the first case and that some of them are outside of such classes and are not known at classifiers training stage. The facets of imbalanced data and recognition with rejection affect different real world problems. In this paper we discuss results of experiment of imbalanced data recognition on the case study of music notation symbols. Decision trees and three methods of joining decision trees (simple voting, bagging and random forest) are studied. These methods are used for recognition without and with rejection.
机译:决策树被认为是最好的分类器之一。在这项工作中,我们使用决策树及其族来解决数据识别不平衡的问题。考虑的是没有拒绝和有拒绝的识别方面:假设所有被识别的元素在第一种情况下都属于所需的类,并且其中一些元素不在此类类中,并且在分类器训练阶段未知。数据不平衡和拒绝识别的各个方面会影响现实中的各种问题。本文在音乐符号符号的案例研究中讨论了不平衡数据识别的实验结果。研究了决策树和加入决策树的三种方法(简单表决,装袋和随机森林)。这些方法用于不带拒绝和带拒绝的识别。

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