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Confidence Sets for Classification

机译:分类的置信度集

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Conformal predictors, introduced by, serve to build prediction intervals by exploiting a notion of conformity of the new data point with previously observed data. In the classification problem, con-formal predictor may respond to the problem of classification with reject option. In the present paper, we propose a novel method of construction of confidence sets, inspired both by conformal prediction and by classification with reject option. An important aspect of these confidence sets is that, when there are several observations to label, they control the proportion of the data we want to label. Moreover, we introduce a notion of risk adapted to classification with reject option. We show that for this risk, the confidence set risk converges to the risk of the confidence set based on the Bayes classifier.
机译:引入的保形预测变量通过利用新数据点与先前观察到的数据的一致性概念来建立预测间隔。在分类问题中,共形预测变量可以使用拒绝选项来响应分类问题。在本文中,我们提出了一种构造置信集的新方法,该方法受共形预测和拒绝选项分类的启发。这些置信度集的一个重要方面是,当要标记多个观察值时,它们将控制我们要标记的数据的比例。此外,我们引入了适用于带有拒绝选项的分类的风险概念。我们表明,对于这种风险,置信度集风险收敛于基于贝叶斯分类器的置信度集风险。

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