Adversarial Dropout Regularization

ICLR 2018 Kuniaki SaitoYoshitaka UshikuTatsuya HaradaKate Saenko

We present a method for transferring neural representations from label-rich source domains to unlabeled target domains. Recent adversarial methods proposed for this task learn to align features across domains by fooling a special domain critic network... (read more)

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TASK DATASET MODEL METRIC NAME METRIC VALUE GLOBAL RANK SOURCE PAPER COMPARE
Synthetic-to-Real Translation Syn2Real-C ADR Accuracy 74.8 # 2

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