BriefGPT.xyz
Jun, 2020
基于互信息最大化分箱的多分类不确定性校准
Multi-Class Uncertainty Calibration via Mutual Information Maximization-based Binning
HTML
PDF
Kanil Patel, William Beluch, Bin Yang, Michael Pfeiffer, Dan Zhang
TL;DR
本研究提出了一种基于信息论的I-Max binning方法和共享类别标定的策略,旨在解决直方图划分方法在分级准确性和样本效率方面的局限,提供高质量多类别排名和校准估计。
Abstract
Post-hoc
calibration
is a common approach for providing high-quality confidence estimates of deep
neural network
predictions. Recent work has shown that widely used scaling methods underestimate their
→