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首页> 外文期刊>Journal of Machine Learnig Research >Data-dependent margin-based generalization bounds for classification
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Data-dependent margin-based generalization bounds for classification

机译:基于数据的基于边距的泛化边界用于分类

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摘要

We derive new margin-based inequalities for the probability of error of classifiers. The main feature of these bounds is that they can be calculated using the training data and therefore may be effectively used for model selection purposes. In particular, the bounds involve empirical complexities measured on the training data (such as the empirical fat-shattering dimension) as opposed to their worst-case counterparts traditionally used in such analyses. Also, our bounds appear to be sharper and more general than recent results involving empirical complexity measures. In addition, we develop an alternative data-based bound for the generalization error of classes of convex combinations of classifiers involving an empirical complexity measure that is easier to compute than the empirical covering number or fat-shattering dimension. We also show examples of efficient computation of the new bounds.
机译:我们为分类器的错误概率导出了新的基于边距的不等式。这些界限的主要特征是可以使用训练数据进行计算,因此可以有效地用于模型选择目的。尤其是,边界涉及在训练数据上测量的经验复杂性(例如经验性的脂肪破碎维度),而不是传统上在此类分析中使用的最坏情况。此外,我们的界限似乎比涉及经验复杂性度量的最新结果更为清晰和笼统。此外,我们为分类器凸组合类别的泛化误差开发了一种基于数据的替代边界,其中涉及经验复杂性度量,该度量比经验覆盖数或破坏脂肪的维度更容易计算。我们还显示了有效计算新边界的示例。

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