LGJan 27, 2023

Learning to Unlearn: Instance-wise Unlearning for Pre-trained Classifiers

arXiv:2301.11578v384 citationsh-index: 88Has Code
Originality Incremental advance
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This addresses the need for instance-wise data deletion in pre-trained models for privacy and fairness, offering a practical solution for real-world applications where retraining is infeasible.

The paper tackles the problem of deleting information from specific instances in pre-trained classifiers to comply with data protection regulations and address vulnerabilities, achieving effective unlearning while preserving performance on remaining data across various image classification benchmarks.

Since the recent advent of regulations for data protection (e.g., the General Data Protection Regulation), there has been increasing demand in deleting information learned from sensitive data in pre-trained models without retraining from scratch. The inherent vulnerability of neural networks towards adversarial attacks and unfairness also calls for a robust method to remove or correct information in an instance-wise fashion, while retaining the predictive performance across remaining data. To this end, we consider instance-wise unlearning, of which the goal is to delete information on a set of instances from a pre-trained model, by either misclassifying each instance away from its original prediction or relabeling the instance to a different label. We also propose two methods that reduce forgetting on the remaining data: 1) utilizing adversarial examples to overcome forgetting at the representation-level and 2) leveraging weight importance metrics to pinpoint network parameters guilty of propagating unwanted information. Both methods only require the pre-trained model and data instances to forget, allowing painless application to real-life settings where the entire training set is unavailable. Through extensive experimentation on various image classification benchmarks, we show that our approach effectively preserves knowledge of remaining data while unlearning given instances in both single-task and continual unlearning scenarios.

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