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Limitations on Low Variance k-Fold Cross Validation in Learning Set of Rules Inducers

机译:规则归纳器学习集中低方差k折交叉验证的局限性

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One of the standard methods in a verification of predictive models is a cross validation. In this paper, we examined prediction stability of simple learning set of rules classifier under the k-fold cross validation. We described a class of rules that can pass the k-fold cross validation with zero or a very low variance in accuracy of prediction. The lossless prediction of correct/incorrect assignment distribution theorem, given by the so-called k-fold stable rules, is established, and its implications are discussed and applied in the experiments.
机译:验证预测模型的标准方法之一是交叉验证。在本文中,我们研究了k折叠交叉验证下简单学习规则分类器集的预测稳定性。我们描述了一类规则,这些规则可以通过k倍交叉验证,且预测准确性的差异为零或非常低。建立了由所谓的k倍稳定规则给出的正确/不正确分配分配定理的无损预测,并讨论了其含义并在实验中进行了应用。

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