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Learning classifier systems for data mining: a comparison of XCS with other classifiers for the Forest Cover data set

机译:学习用于数据挖掘的分类器系统:XCS与森林覆盖数据集其他分类器的比较

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This paper compares the performance, in terms of prediction accuracy, of a learning classifier system based on Wilson's XCS with commonly used classifiers from the fields of decision trees, neural networks and support vector machines. The experiments are performed on the Forest Cover Type database, a large data set available at the UCI KDD Archive. The first objective of this paper is to highlight the potential of XCS as a data mining tool. The second objective is to provide extensive benchmarking results for experiments performed under randomised conditions for several modelling techniques. We find that C5 Decision trees perform significantly better than other techniques, and that the learning classifier system performs better or as well as three of the eight classifiers used. We discuss why C5 outperforms the other classifiers and identify ways in which XCS could be adapted to make it more suitable for data mining.
机译:本文从预测树的角度比较了基于Wilson XCS的学习分类器系统与决策树,神经网络和支持向量机等领域常用分类器的性能。实验在森林覆盖类型数据库上进行,森林覆盖类型数据库是UCI KDD存档中可用的大量数据集。本文的首要目标是强调XCS作为数据挖掘工具的潜力。第二个目标是为几种建模技术在随机条件下进行的实验提供广泛的基准测试结果。我们发现,C5决策树的性能明显优于其他技术,并且学习分类器系统的性能更好,或与所使用的八个分类器中的三个一样好。我们讨论了C5为什么胜过其他分类器的原因,并确定了XCS可以进行修改以使其更适合于数据挖掘的方式。

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