采用随机抽样的复合分裂准则

A. M. Mahmood, M. Kuppa
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引用次数: 0

摘要

在过去的几年里,不断增长的数据导致了大量的分类算法,特别是决策树算法。然而,从大型不相关数据集中学习决策树与学习小型和中等规模的数据集有很大的不同。在实践中,只使用小型和中等规模的数据集是很少的。不幸的是,最流行的启发式函数增益比在处理大型和不相关的数据集时具有严重的缺点。为了解决这些问题,我们设计了一种新的随机抽样的复合分裂准则。我们的随机抽样方法依赖于小的随机属性子集,并且在合理的时间内对这样一个集合进行操作在计算上是便宜的。利用40个UCI数据集验证了该方法的经验和理论性质。实验结果证明了该方法在树大小和精度方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A composite splitting criterion using random sampling
The ever growing presence of data lead to a large number of proposed algorithms for classification and especially decision trees over the last few years. However, learning decision trees from large irrelevant datasets is quite different from learning small and moderate sized datasets. In practice, use of only small and moderate sized datasets is rare. Unfortunately, the most popular heuristic function gain ratio has a serious disadvantage towards dealing with large and irrelevant datasets. To tackle these issues, we design a new composite splitting criterion with random sampling approach. Our random sampling method depends on small random subset of attributes and it is computationally cheap to act on such a set in a reasonable time. The empirical and theoretical properties are validated by using 40 UCI datasets. The experimental result supports the efficacy of the proposed method in terms of tree size and accuracy.
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