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Selective Forgetting of Deep Networks at a Finer Level than Samples

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Selective forgetting or removing information from deep neural networks (DNNs) is essential for continual learning and is challenging in controlling the DNNs. Such forgetting is crucial also in a practical sense since the deployed DNNs may be trained on the data with outliers, poisoned by attackers, or with leaked/sensitive information. In this paper, we formulate selective forgetting for classification tasks at a finer level than the samples' level. We specify the finer level based on four datasets distinguished by two conditions: whether they contain information to be forgotten and whether they are available for the forgetting procedure. Additionally, we reveal the need for such formulation with the datasets by showing concrete and practical situations. Moreover, we introduce the forgetting procedure as an optimization problem on three criteria; the forgetting, the correction, and the remembering term. Experimental results show that the proposed methods can make the model forget to use specific information for classification. Notably, in specific cases, our methods improved the model's accuracy on the datasets, which contains information to be forgotten but is unavailable in the forgetting procedure. Such data are unexpectedly found and misclassified in actual situations.

Tomohiro Hayase, Suguru Yasutomi, Takashi Katoh• 2020

Related benchmarks

TaskDatasetResultRank
Image ClassificationCIFAR-10
Accuracy98.49
507
Image ClassificationCIFAR-10 (Df)
Accuracy10.4
14
Image ClassificationVggface2 (Df)
Accuracy0.0429
14
Image ClassificationVggFace2
Accuracy98.89
14
Face RetrievalCFP-FP
mAP90
11
Face RetrievalCelebA D_f (test)
mAP87.73
8
Face RetrievalVggFace2
mAP88.4
8
Face RetrievalCelebA extended (test)
mAP85.87
8
Face RetrievalCFP-FP (test)
mAP0.6827
8
Face UnlearningCelebA D_r retain set (test)
Accuracy96.5
8
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