TAPE: Tailored Posterior Difference for Auditing of Machine Unlearning
Weiqi Wang, Zhiyi Tian, An Liu, and Shui Yu

TL;DR
TAPE is a novel method for auditing machine unlearning that efficiently assesses data removal without needing access to original training, using model differences and influence estimation.
Contribution
TAPE introduces a new approach to unlearning auditing that is independent of original training, utilizing influence estimation and model difference analysis.
Findings
TAPE achieves at least 4.5× faster auditing than existing methods.
It supports broader unlearning scenarios with improved efficiency.
Experimental results demonstrate TAPE's superiority in unlearning verification.
Abstract
With the increasing prevalence of Web-based platforms handling vast amounts of user data, machine unlearning has emerged as a crucial mechanism to uphold users' right to be forgotten, enabling individuals to request the removal of their specified data from trained models. However, the auditing of machine unlearning processes remains significantly underexplored. Although some existing methods offer unlearning auditing by leveraging backdoors, these backdoor-based approaches are inefficient and impractical, as they necessitate involvement in the initial model training process to embed the backdoors. In this paper, we propose a TAilored Posterior diffErence (TAPE) method to provide unlearning auditing independently of original model training. We observe that the process of machine unlearning inherently introduces changes in the model, which contains information related to the erased data.…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Privacy, Security, and Data Protection · Mobile Crowdsensing and Crowdsourcing
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