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Comparison of decision trees with Rényi and Tsallis entropy applied for imbalanced churn dataset

机译:带有不平衡流失数据集的Rényi和Tsallis熵的决策树比较

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Two algorithms for building classification trees, based on Tsallis and Rényi entropy, are proposed and applied to customer churn problem. The dataset for modeling represents highly unbalanced proportion of two classes, which is often found in real world applications, and may cause negative effects on classification performance of the algorithms. The quality measures for obtained trees are compared for different values of α parameter.
机译:提出了两种基于Tsallis和Rényi熵的分类树构建算法,并将其应用于客户流失问题。用于建模的数据集代表了两个类别的高度不平衡比例,这在现实世界的应用程序中经常发现,并且可能对算法的分类性能造成负面影响。比较获得的树木的质量度量,以获取不同的α参数值。

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