BriefGPT.xyz
Jun, 2019
用于分类的非参数校准
Non-Parametric Calibration for Classification
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Jonathan Wenger, Hedvig Kjellström, Rudolph Triebel
TL;DR
提出了一种调整分类器置信度估计的方法,使其接近正确分类的概率,该方法利用了潜在高斯过程的非参数表示,并针对多类分类进行了特别设计,适用于任何输出置信度估计的分类器,不限于神经网络,实验证明其性能强。
Abstract
Many applications for
classification methods
not only require high accuracy but also reliable estimation of
predictive uncertainty
. However, while many current classification frameworks, in particular deep neural
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