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Fast Effective Rule Induction

机译:快速有效的规则归纳

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Many existing rule learning systems are computationally expensive on large noisy datasets. In this paper we evaluate the recently-proposed rule learning algorithm IREP on a large and diverse collection of benchmark problems. We show that while IREP is extremely efficient, it frequently gives error rates higher than those of C4.5 and C4.5rules. We then propose a number of modifications resulting in an algorithm RIPPERk that is very competitive with C4.5rules with respect to error rates but much more efficient on large samples. RIPPERk obtains error rates lower than or equivalent to C4.5rules on 22 of 37 benchmark problems, scales nearly linearly with the number of training examples, and can effciently process noisy datasets containing hundred of thousands of examples.
机译:许多现有的规则学习系统在大噪声数据集上的计算成本很高。在本文中,我们对大量基准问题的集合评估了最近提出的规则学习算法IREP。我们证明,尽管IREP效率极高,但它的错误率经常高于C4.5和C4.5规则。然后,我们提出了许多修改方案,从而使算法RIPPERk在错误率方面与C4.5规则极具竞争力,但在大样本上效率更高。 RIPPERk在37个基准测试问题中的22个获得的错误率低于或等于C4.5规则,并且与训练示例的数量几乎成线性比例,并且可以有效地处理包含数十万个示例的嘈杂数据集。

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