论文标题
关于类 - 后者概率估计的焦点损失:理论观点
On Focal Loss for Class-Posterior Probability Estimation: A Theoretical Perspective
论文作者
论文摘要
该焦点损失表明了其在许多现实世界中(例如对象检测和图像分类)中的有效性,但到目前为止,其理论理解受到限制。在本文中,我们首先证明了局灶性损失是对分类校准的,即其最小化剂肯定会产生贝叶斯最佳分类器,因此在理论上可以证明在分类中使用焦点损失是合理的。但是,我们还证明了一个负面的事实,即局灶性损失并不是严格适当的,即,通过焦点损失最小化获得的分类器的置信度评分与真实的类形成率概率不符,因此它作为类 - 较高的概率估计量并不可靠。为了减轻此问题,我们接下来证明了置信度得分的特定封闭形式转换使我们能够恢复真正的类阶层概率。通过基准数据集的实验,我们证明了我们提出的转化可显着提高类 - 后者概率估计的准确性。
The focal loss has demonstrated its effectiveness in many real-world applications such as object detection and image classification, but its theoretical understanding has been limited so far. In this paper, we first prove that the focal loss is classification-calibrated, i.e., its minimizer surely yields the Bayes-optimal classifier and thus the use of the focal loss in classification can be theoretically justified. However, we also prove a negative fact that the focal loss is not strictly proper, i.e., the confidence score of the classifier obtained by focal loss minimization does not match the true class-posterior probability and thus it is not reliable as a class-posterior probability estimator. To mitigate this problem, we next prove that a particular closed-form transformation of the confidence score allows us to recover the true class-posterior probability. Through experiments on benchmark datasets, we demonstrate that our proposed transformation significantly improves the accuracy of class-posterior probability estimation.