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Correcting the Usage of the Hoeffding Inequality in Stream Mining

机译:纠正Hoeffding不等式在流挖掘中的用法

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Many stream classification algorithms use the Hoeffding Inequality to identify the best split attribute during tree induction. We show that the prerequisites of the Inequality are violated by these algorithms, and we propose corrective steps. The new stream classification core, correctedVFDT, satisfies the prerequisites of the Hoeffding Inequality and thus provides the expected performance guarantees. The goal of our work is not to improve accuracy, but to guarantee a reliable and interpretable error bound. Nonetheless, we show that our solution achieves lower error rates regarding split attributes and sooner split decisions while maintaining a similar level of accuracy.
机译:许多流分类算法使用Hoeffding不等式在树归纳过程中识别最佳拆分属性。我们证明了这些算法违反了不等式的先决条件,并提出了纠正措施。新的流分类核心,更正后的VFDT,满足了Hoeffding不等式的先决条件,从而提供了预期的性能保证。我们工作的目标不是提高准确性,而是保证可靠且可解释的错误范围。尽管如此,我们证明了我们的解决方案在拆分属性方面实现了较低的错误率,并更快地做出了拆分决策,同时保持了相似的准确性。

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