Selective Classification Under Distribution Shifts.

Hengyue Liang, Le Peng, Ju Sun
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Abstract

In selective classification (SC), a classifier abstains from making predictions that are likely to be wrong to avoid excessive errors. To deploy imperfect classifiers-either due to intrinsic statistical noise of data or for robustness issue of the classifier or beyond-in high-stakes scenarios, SC appears to be an attractive and necessary path to follow. Despite decades of research in SC, most previous SC methods still focus on the ideal statistical setting only, i.e., the data distribution at deployment is the same as that of training, although practical data can come from the wild. To bridge this gap, in this paper, we propose an SC framework that takes into account distribution shifts, termed generalized selective classification, that covers label-shifted (or out-of-distribution) and covariate-shifted samples, in addition to typical in-distribution samples, the first of its kind in the SC literature. We focus on non-training-based confidence-score functions for generalized SC on deep learning (DL) classifiers, and propose two novel margin-based score functions. Through extensive analysis and experiments, we show that our proposed score functions are more effective and reliable than the existing ones for generalized SC on a variety of classification tasks and DL classifiers. The code is available at https://github.com/sun-umn/sc_with_distshift.

分布移位下的选择性分类。
在选择性分类(SC)中,分类器避免做出可能错误的预测,以避免过多的错误。为了部署不完美的分类器——要么是由于数据的固有统计噪声,要么是由于分类器的鲁棒性问题,或者在高风险的情况下,SC似乎是一个有吸引力和必要的路径。尽管对SC进行了数十年的研究,但大多数先前的SC方法仍然只关注理想的统计设置,即部署时的数据分布与训练时的数据分布相同,尽管实际数据可能来自野外。为了弥补这一差距,在本文中,我们提出了一个SC框架,该框架考虑了分布移位,称为广义选择分类,除了典型的分布内样本外,还涵盖了标签移位(或分布外)和协变量移位样本,这是SC文献中的第一个此类样本。研究了深度学习分类器上广义SC的非基于训练的置信度分数函数,提出了两个新的基于边缘的置信度分数函数。通过广泛的分析和实验,我们证明了我们提出的分数函数在各种分类任务和深度学习分类器上比现有的广义SC分数函数更有效和可靠。代码可在https://github.com/sun-umn/sc_with_distshift上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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