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Extreme value correction: a method for correcting optimistic estimations in rule learning

机译:极值校正:一种在规则学习中校正乐观估计的方法

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摘要

Machine learning algorithms rely on their ability to evaluate the constructed hypotheses for choosing the optimal hypothesis during learning and assessing the quality of the model afterwards. Since these estimates, in particular the former ones, are based on the training data from which the hypotheses themselves were constructed, they are usually optimistic. The paper shows three different solutions; two for the artificial boundary cases with the smallest and the largest optimism and a general correction procedure called extreme value correction (EVC) based on extreme value distribution. We demonstrate the application of the technique to rule learning, specifically to estimating classification accuracy of a single rule, and evaluate it on an artificial data set and on a number of UCI data sets. We observed that the correction successfully improved the accuracy estimates. We also describe an approach for combining rules into a linear global classifier and show that using EVC estimates leads to more accurate classifiers.
机译:机器学习算法依靠其评估构造的假设的能力,以在学习期间选择最佳假设并随后评估模型的质量。由于这些估计,尤其是以前的估计,是基于构成假设本身的训练数据而得出的,因此通常是乐观的。本文展示了三种不同的解决方案。对于具有最小和最大乐观度的人工边界情况,有两种方法,以及基于极值分布的通用校正程序,称为极值校正(EVC)。我们演示了该技术在规则学习中的应用,特别是在估计单个规则的分类准确性方面,并在人工数据集和许多UCI数据集上对其进行了评估。我们观察到该校正成功地提高了准确性估计。我们还描述了将规则组合到线性全局分类器中的方法,并表明使用EVC估计会导致更准确的分类器。

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