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Gradient Descent Style Leveraging of Decision Trees and Stumps for Misclassification Cost Performance

机译:决策树和树桩的梯度下降样式用于错误分类的成本绩效

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摘要

This paper investigates the use, for the task of classifier learning in the presence of misclassification costs, of some gradient descent style leveraging approaches to classifier learning: Schapire and Singer's AdaBoost.MH and AdaBoost.MR [16], and Collins et al's multi-class logistic regression method [4], and some modifications that retain the gradient descent style approach. Decision trees and stumps are used as the underlying base classifiers, learned from modified versions of Quinlan's C4.5 [15]. Experiments are reported comparing the performance, in terms of average cost, of the modified methods to that of the originals, and to the previously suggested "Cost Boosting" methods of Ting and Zheng [21] and Ting [18], which also use decision trees based upon modified C4.5 code, but do not have an interpretation in the gradient descent framework. While some of the modifications improve upon the originals in terms of cost performance for both trees and stumps, the comparison with tree-based Cost Boosting suggests that out of the methods first experimented with here, it is one based on stumps that has the most promise.
机译:本文研究了在存在错误分类成本的情况下用于分类器学习的任务,利用一些梯度下降样式利用分类器学习方法:Schapire和Singer的AdaBoost.MH和AdaBoost.MR [16],以及Collins等人的多分类器学习方法。类逻辑回归方法[4],以及一些保留梯度下降样式方法的修改。决策树和树桩被用作基础的基础分类器,是从Quinlan C4.5的修改版中学到的[15]。据报道,有实验比较了改良方法与原始方法的性能,以及与Ting和Zheng [21]和Ting [18]先前建议的“成本提升”方法的性能,后者也使用决策基于修改后的C4.5代码的树,但在梯度下降框架中没有解释。虽然某些修改在树和树桩的成本性能方面都对原始文档进行了改进,但与基于树的“成本提升”的比较表明,在此处首次尝试的方法中,基于树桩的方法最有希望。

著录项

  • 作者

    Cameron-Jones, RM;

  • 作者单位
  • 年度 2001
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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