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Towards Discriminability and Diversity: Batch Nuclear-norm Maximization under Label Insufficient Situations

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The learning of the deep networks largely relies on the data with human-annotated labels. In some label insufficient situations, the performance degrades on the decision boundary with high data density. A common solution is to directly minimize the Shannon Entropy, but the side effect caused by entropy minimization, i.e., reduction of the prediction diversity, is mostly ignored. To address this issue, we reinvestigate the structure of classification output matrix of a randomly selected data batch. We find by theoretical analysis that the prediction discriminability and diversity could be separately measured by the Frobenius-norm and rank of the batch output matrix. Besides, the nuclear-norm is an upperbound of the Frobenius-norm, and a convex approximation of the matrix rank. Accordingly, to improve both discriminability and diversity, we propose Batch Nuclear-norm Maximization (BNM) on the output matrix. BNM could boost the learning under typical label insufficient learning scenarios, such as semi-supervised learning, domain adaptation and open domain recognition. On these tasks, extensive experimental results show that BNM outperforms competitors and works well with existing well-known methods. The code is available at https://github.com/cuishuhao/BNM.

Shuhao Cui, Shuhui Wang, Junbao Zhuo, Liang Li, Qingming Huang, Qi Tian• 2020

Related benchmarks

TaskDatasetResultRank
Unsupervised Domain AdaptationOffice-Home (test)
Average Accuracy71.1
332
Image ClassificationOffice-31
Average Accuracy88.6
261
Unsupervised Domain AdaptationOffice-Home
Average Accuracy71.1
238
Image ClassificationOffice-Home (test)
Mean Accuracy67.9
199
Domain AdaptationOffice-31 unsupervised adaptation standard
Accuracy (A to W)91.5
162
Image ClassificationDomainNet
Accuracy (ClipArt)54.9
161
Image ClassificationOffice-Home
Average Accuracy69.4
142
Domain AdaptationOffice-Home (test)
Mean Accuracy67.9
112
Unsupervised Domain AdaptationDomainNet
Average Accuracy33.3
100
Domain AdaptationVisDA 2017 (test)
Mean Class Accuracy70.4
98
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