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Hybrid Cost-Sensitive Decision Tree

机译:混合成本敏感决策树

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摘要

Cost-sensitive decision tree and cost-sensitive naive Bayes are both new cost-sensitive learning models proposed recently to minimize the total cost of test and misclassifications. Each of them has its advantages and disadvantages. In this paper, we propose a novel cost-sensitive learning model, a hybrid cost-sensitive decision tree, called DTNB, to reduce the minimum total cost, which integrates the advantages of cost-sensitive decision tree and of the cost-sensitive naive Bayes together. We empirically evaluate it over various test strategies, and our experiments show that our DTNB outperforms cost-sensitive decision and the cost-sensitive naive Bayes significantly in minimizing the total cost of tests and misclassification based on the same sequential test strategies, and single batch strategies.
机译:成本敏感的决策树和成本敏感的朴素贝叶斯(Bayes)都是最近提出的新的成本敏感的学习模型,用于最小化测试和错误分类的总成本。它们每个都有其优点和缺点。在本文中,我们提出了一种新颖的成本敏感型学习模型,即称为DTNB的混合成本敏感型决策树,以降低最低总成本,该模型融合了成本敏感型决策树和成本敏感型朴素贝叶斯的优势一起。我们通过各种测试策略进行经验评估,我们的实验表明,在基于相同顺序测试策略和单批策略的情况下,DTNB在将总测试成本和误分类降至最低的情况下,明显优于成本敏感的决策和成本敏感的朴素贝叶斯。 。

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