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On the interpretability of conditional probability estimates in the agnostic setting

机译:关于不可知论中条件概率估计的可解释性

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We study the interpretability of conditional probability estimates for binary classification under the agnostic setting or scenario. Under the agnostic setting, conditional probability estimates do not necessarily reflect the true conditional probabilities. Instead, they have a certain calibration property: among all data points that the classifier has predicted $mathcal{P}(Y=1|X)=p$, $p$ portion of them actually have label $Y=1$. For cost-sensitive decision problems, this calibration property provides adequate support for us to use Bayes Decision Rule. In this paper, we define a novel measure for the calibration property together with its empirical counterpart, and prove a uniform convergence result between them. This new measure enables us to formally justify the calibration property of conditional probability estimations. It also provides new insights on the problem of estimating and calibrating conditional probabilities, and allows us to reliably estimate the expected cost of decision rules when applied to an unlabeled dataset.
机译:我们研究在不可知论背景或场景下对二进制分类进行条件概率估计的可解释性。在不可知的情况下,条件概率估计不一定反映真实的条件概率。相反,它们具有一定的校准属性:在分类器预测的所有数据点中,$ mathcal {P}(Y = 1 | X)= p $,其中的$ p $部分实际上具有标签$ Y = 1 $。对于成本敏感的决策问题,此校准属性为我们使用贝叶斯决策规则提供了足够的支持。在本文中,我们为校准特性定义了一种新颖的测量方法,并给出了与之对应的经验值,并证明了它们之间的一致收敛结果。这项新措施使我们能够正式证明条件概率估计的校准特性。它还提供了有关条件概率估计和校准问题的新见解,并允许我们可靠地估计应用于无标签数据集的决策规则的预期成本。

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