In many applications, it is desirable that a classifier not only makes accurate predictions, but also outputs calibrated posterior probabilities. However, many existing classifiers, especially deep neural network classifiers, tend to be uncalibrated. Post-hoc calibration is a technique to recalibrate a model by learning a calibration map. Existing approaches mostly focus on constructing calibration maps with low calibration errors, however, this quality is inadequate for a calibrator being useful. In this paper, we introduce two constraints that are worth consideration in designing a calibration map for post-hoc calibration. Then we present Meta-Cal, which is built from a base calibrator and a ranking model. Under some mild assumptions, two high-probability bounds are given with respect to these constraints. Empirical results on CIFAR-10, CIFAR-100 and ImageNet and a range of popular network architectures show our proposed method significantly outperforms the current state of the art for post-hoc multi-class classification calibration.
翻译:在许多应用中,一个分类器不仅应作出准确的预测,而且应提供校准的后继概率产出。然而,许多现有的分类器,特别是深神经网络分类器,往往没有校准。热后校准是一种通过学习校准地图对模型进行校准的技术。现有方法主要侧重于使用低校准误差来绘制校准地图,但是,这种质量对于校准器有用来说是不够的。在本文件中,我们引入了两个值得考虑的制约因素:设计热后校准图。然后,我们提出Meta-Cal,这是从一个基础校准器和一个等级模型中建造的。在某些轻度假设下,对这些限制有两种高概率的界限。CIFAR-10、CIFAR-100和图象网的实证结果以及一系列广受欢迎的网络结构显示,我们所提议的方法大大超越了热后多级分类校准技术的现状。