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Generalizing to Unseen Domains via Adversarial Data Augmentation

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arxiv 1805.12018 v2 pith:SNWGKJGD submitted 2018-05-30 cs.CV

Generalizing to Unseen Domains via Adversarial Data Augmentation

classification cs.CV
keywords datadomainsmethodadversarialaugmentationdomainexamplesiterative
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We are concerned with learning models that generalize well to different \emph{unseen} domains. We consider a worst-case formulation over data distributions that are near the source domain in the feature space. Only using training data from a single source distribution, we propose an iterative procedure that augments the dataset with examples from a fictitious target domain that is "hard" under the current model. We show that our iterative scheme is an adaptive data augmentation method where we append adversarial examples at each iteration. For softmax losses, we show that our method is a data-dependent regularization scheme that behaves differently from classical regularizers that regularize towards zero (e.g., ridge or lasso). On digit recognition and semantic segmentation tasks, our method learns models improve performance across a range of a priori unknown target domains.

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