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Bridging Theory and Algorithm for Domain Adaptation

About

This paper addresses the problem of unsupervised domain adaption from theoretical and algorithmic perspectives. Existing domain adaptation theories naturally imply minimax optimization algorithms, which connect well with the domain adaptation methods based on adversarial learning. However, several disconnections still exist and form the gap between theory and algorithm. We extend previous theories (Mansour et al., 2009c; Ben-David et al., 2010) to multiclass classification in domain adaptation, where classifiers based on the scoring functions and margin loss are standard choices in algorithm design. We introduce Margin Disparity Discrepancy, a novel measurement with rigorous generalization bounds, tailored to the distribution comparison with the asymmetric margin loss, and to the minimax optimization for easier training. Our theory can be seamlessly transformed into an adversarial learning algorithm for domain adaptation, successfully bridging the gap between theory and algorithm. A series of empirical studies show that our algorithm achieves the state of the art accuracies on challenging domain adaptation tasks.

Yuchen Zhang, Tianle Liu, Mingsheng Long, Michael I. Jordan• 2019

Related benchmarks

TaskDatasetResultRank
Unsupervised Domain AdaptationOffice-Home (test)
Average Accuracy68.3
332
Image ClassificationOffice-31
Average Accuracy88.9
325
Unsupervised Domain AdaptationOffice-Home
Average Accuracy68.1
279
Image ClassificationDomainNet
Accuracy (ClipArt)54.3
238
Domain AdaptationOffice-31
Average Accuracy88.9
187
Image ClassificationOffice-Home
Average Accuracy68.1
167
Domain AdaptationOffice-31 unsupervised adaptation standard
Accuracy (A to W)94.5
162
Domain AdaptationOffice-Home
Average Accuracy68.1
140
Object ClassificationVisDA synthetic-to-real 2017
Mean Accuracy78.8
139
Node ClassificationDBLP
Micro-F174.5
126
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