Learning Bounds for Open-Set Learning
Zhen Fang * 1 Jie Lu 1 Anjin Liu * 1 Feng Liu 1 Guangquan Zhang 1
Abstract et al., 2018; Yang et al., 2020).
Traditional supervised learning aims to train a However, the closed-set assumption is not realistic during
classifier in the closed-set world, where training the testing phase (i.e., there are no labels in the samples)
and test samples share the same label space. In since it is no ...
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