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Detecting and Correcting for Label Shift with Black Box Predictors

机译:使用黑匣子预测器检测和纠正标签偏移

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Faced with distribution shift between training and test set, we wish to detect and quantify the shift, and to correct our classifiers without test set labels. Motivated by medical diagnosis, where diseases (targets), cause symptoms (observations), we focus on label shift, where the label marginal p(y) changes but the conditional p(x| y) does not. We propose Black Box Shift Estimation (BBSE) to estimate the test distribution p(y). BBSE exploits arbitrary black box predictors to reduce dimensionality prior to shift correction. While better predictors give tighter estimates, BBSE works even when predictors are biased, inaccurate, or uncalibrated, so long as their confusion matrices are invertible. We prove BBSE’s consistency, bound its error, and introduce a statistical test that uses BBSE to detect shift. We also leverage BBSE to correct classifiers. Experiments demonstrate accurate estimates and improved prediction, even on high-dimensional datasets of natural images.
机译:面对训练和测试集之间的分布偏移,我们希望检测和量化偏移,并纠正没有测试集标签的分类器。受医学诊断的启发,在疾病(目标)引起症状(观察)的情况下,我们关注标签移动,其中标签边际p(y)发生变化,而条件p(x | y)不变。我们提出黑匣子位移估计(BBSE)来估计测试分布p(y)。 BBSE利用任意的黑匣子预测变量来减少移位校正之前的维数。尽管更好的预测变量会给出更严格的估计,但只要预测变量有偏倚,可逆,即使预测变量有偏见,不准确或未经校准,BBSE仍然可以工作。我们证明了BBSE的一致性,限制了错误,并介绍了一种使用BBSE来检测变动的统计测试。我们还利用BBSE来纠正分类器。实验表明,即使是在自然图像的高维数据集上,也能提供准确的估计值和改进的预测。

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