2020
DOI: 10.48550/arxiv.2012.13431
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Mixed-Privacy Forgetting in Deep Networks

Abstract: We show that the influence of a subset of the training samples can be removed -or "forgotten" -from the weights of a network trained on large-scale image classification tasks, and we provide strong computable bounds on the amount of remaining information after forgetting. Inspired by real-world applications of forgetting techniques, we introduce a novel notion of forgetting in mixed-privacy setting, where we know that a "core" subset of the training samples does not need to be forgotten. While this variation o… Show more

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