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In Defense of C4.5: Notes on Learning One-Level Decision Trees

机译:捍卫C4.5:关于学习一级决策树的说明

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摘要

We discuss the implications of Holte's recently-published article, which demonstrated that on the most commonly used data very simple classification rules are almost as accurate as decision trees produced by Quinlan's C4.5. We consider, in particular, what is the significance of Holte's results for the future of top-down induction of decision trees. To an extent, Holte questioned the sense of further research on multilevel decision tree learning. We go in detail through all the parts of Holte's study. We try to put the results into perspective. We argue that the (in absolute terms) small difference in accuracy between 1R and C4.5 that was witnessed by Holte is still significant. We claim that C4.5 possesses additional accuracy-related advantages over 1R. In addition we discuss the representativeness of the databases used by Holte. We compare empirically the optimal accuracies of multilevel and one-level decision trees and observe some significant differences. We point out several deficiencies of limited-complexity classifiers.
机译:我们讨论了Holte最近发表的文章的含义,该文章表明在最常用的数据上,非常简单的分类规则几乎与Quinlan C4.5生成的决策树一样准确。我们尤其要考虑Holte结果对自上而下的决策树归纳法的意义。在某种程度上,霍尔特对多层次决策树学习的进一步研究的意义提出了质疑。我们将详细介绍Holte研究的所有部分。我们尝试将结果放在透视图中。我们认为Holte所见证的1R和C4.5之间的(绝对值)准确性差异仍然很大。我们声称C4.5比1R具有更多的精度相关优势。此外,我们讨论了Holte使用的数据库的代表性。我们从经验上比较了多级和一级决策树的最佳精度,并观察到一些显着差异。我们指出了有限复杂度分类器的几个缺陷。

著录项

  • 来源
    《Machine learning》|1994年|62-69|共8页
  • 会议地点 New Brunswick NJ(US);New Brunswick NJ(US)
  • 作者

    Tapio Elomaa;

  • 作者单位

    Department of Computer Science P. O. Box 26 (Teollisuuskatu 23) FIN-00014 University of Helsinki, Finland;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 计算机的应用;
  • 关键词

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