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Testing the Calibration of Classification Models from First Principles

机译:从第一原理测试分类模型的校准

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摘要

The accurate assessment of the calibration of classification models is severely limited by the fact that there is no easily available gold standard against which to compare a model’s outputs. The usual procedures group expected and observed probabilities, and then perform a χ2 goodness-of-fit test. We propose an entirely new approach to calibration testing that can be derived directly from the first principles of statistical hypothesis testing. The null hypothesis is that the model outputs are correct, i.e., that they are good estimates of the true unknown class membership probabilities. Our test calculates a p-value by checking how (im)probable the observed class labels are under the null hypothesis. We demonstrate by experiments that our proposed test performs comparable to, and sometimes even better than, the Hosmer-Lemeshow goodness-of-fit test, the de facto standard in calibration assessment.
机译:对分类模型的校准的准确评估受到严重限制,因为没有一个容易获得的黄金标准可用于比较模型的输出。常规程序分组预期和观察到的概率,然后执行χ 2 拟合优度检验。我们提出了一种全新的校准测试方法,该方法可以直接从统计假设测试的第一原理中得出。零假设是模型输出是正确的,即它们是对真正的未知类成员资格概率的良好估计。我们的测试通过检查观察到的类别标签在原假设下的可能性(不大)来计算p值。我们通过实验证明,我们提出的测试的性能与校准评估中的实际标准Hosmer-Lemeshow拟合优度测试相当,有时甚至更好。

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