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首页> 外文期刊>Journal of the American statistical association >Adaptive Confidence Intervals for the Test Error in Classification
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Adaptive Confidence Intervals for the Test Error in Classification

机译:分类中测试错误的自适应置信区间

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摘要

The estimated test error of a learned classifier is the most commonly reported measure of classifier performance. However, constructing a high-quality point estimator of the test error has proved to be very difficult. Furthermore, common interval estimators (e.g., confidence intervals) are based on the point estimator of the test error and thus inherit all the difficulties associated with the point estimation problem. As a result, these confidence intervals do not reliably deliver nominal coverage. In contrast, we directly construct the confidence interval by using smooth data-dependent upper and lower bounds on the test error. We prove that, for linear classifiers, the proposed confidence interval automatically adapts to the nonsmoothness of the test error, is consistent under fixed and local alternatives, and does not require that the Bayes classifier be linear. Moreover, the method provides nominal coverage on a suite of test problems using a range of classification algorithms and sample sizes. This article has supplementary material online.
机译:学习的分类器的估计测试误差是最常报告的分类器性能度量。但是,事实证明,构造测试误差的高质量点估计器非常困难。此外,公共间隔估计器(例如,置信间隔)基于测试误差的点估计器,因此继承了与点估计问题相关的所有困难。结果,这些置信区间不能可靠地提供名义覆盖。相反,我们通过使用依赖于数据的平滑误差上下限来直接构造置信区间。我们证明,对于线性分类器,建议的置信区间会自动适应测试误差的非平滑性,在固定和局部替代方案下保持一致,并且不需要贝叶斯分类器是线性的。此外,该方法使用一系列分类算法和样本量来提供一系列测试问题的名义覆盖率。本文在线提供了补充材料。

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