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Reliable Confidence Predictions Using Conformal Prediction

机译:使用保形预测的可靠置信度预测

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Conformal classifiers output confidence prediction regions, i.e., multi-valued predictions that are guaranteed to contain the true output value of each test pattern with some predefined probability. In order to fully utilize the predictions provided by a conformal classifier, it is essential that those predictions are reliable, i.e., that a user is able to assess the quality of the predictions made. Although conformal classifiers are statistically valid by default, the error probability of the prediction regions output are dependent on their size in such a way that smaller, and thus potentially more interesting, predictions are more likely to be incorrect. This paper proposes, and evaluates, a method for producing refined error probability estimates of prediction regions, that takes their size into account. The end result is a binary conformal confidence predictor that is able to provide accurate error probability estimates for those prediction regions containing only a single class label.
机译:保形分类器输出置信度预测区域,即多值预测,可以保证以一定的预定义概率包含每个测试模式的真实输出值。为了充分利用保形分类器提供的预测,必须保证这些预测是可靠的,即,用户能够评估所作预测的质量。尽管共形分类器默认情况下在统计上是有效的,但预测区域输出的错误概率取决于它们的大小,以使较小的预测(因此可能更有趣)的预测更有可能是不正确的。本文提出并评估了一种将预测区域的大小考虑在内的,用于产生精确的预测区域误差概率估计的方法。最终结果是一个二进制共形置信度预测器,它能够为仅包含单个类别标签的那些预测区域提供准确的错误概率估计。

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