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Jmax-pruning: a facility for the information theoretic pruning of modular classification rules

机译:Jmax修剪:用于模块化分类规则的信息理论修剪的工具

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摘要

The Prism family of algorithms induces modular classification rules in contrast to the Top Down Induction of Decision Trees (TDIDT) approach which induces classification rules in the intermediate form of a tree structure. Both approaches achieve a comparable classification accuracy. However in some cases Prism outperforms TDIDT. For both approaches pre-pruning facilities have been developed in order to prevent the induced classifiers from overfitting on noisy datasets, by cutting rule terms or whole rules or by truncating decision trees according to certain metrics. There have been many pre-pruning mechanisms developed for the TDIDT approach, but for the Prism family the only existing pre-pruning facility is J-pruning. J-pruning not only works on Prism algorithms but also on TDIDT. Although it has been shown that J-pruning produces good results, this work points out that J-pruning does not use its full potential. The original J-pruning facility is examined and the use of a new pre-pruning facility, called Jmax-pruning, is proposed and evaluated empirically. A possible pre-pruning facility for TDIDT based on Jmax-pruning is also discussed.
机译:与以树结构的中间形式归纳分类规则的“自顶向下归纳决策树”(TDIDT)方法相比,Prism系列算法归纳了模块化分类规则。两种方法均达到了可比的分类精度。但是,在某些情况下,棱镜的性能优于TDIDT。对于这两种方法,都已经开发出预修剪工具,以通过剪切规则项或整个规则或根据某些度量截断决策树来防止归纳的分类器在嘈杂的数据集上过度拟合。已经为TDIDT方法开发了许多预修剪机制,但是对于Prism系列,唯一现有的预修剪工具是J修剪。 J修剪不仅适用于Prism算法,而且适用于TDIDT。尽管已经证明J修剪可以产生良好的结果,但是这项工作指出J修剪没有充分发挥其潜力。对原始的J修剪工具进行了检查,并提出了新的预修剪工具(称为Jmax修剪)的使用并根据经验进行了评估。还讨论了基于Jmax修剪的TDIDT可能的修剪前工具。

著录项

  • 作者

    Stahl Frederic; Bramer M.;

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  • 年度 2012
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  • 原文格式 PDF
  • 正文语种 en
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