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Fast-NTK: Parameter-Efficient Unlearning for Large-Scale Models

Machine Learning 2023-12-25 v1

Abstract

The rapid growth of machine learning has spurred legislative initiatives such as ``the Right to be Forgotten,'' allowing users to request data removal. In response, ``machine unlearning'' proposes the selective removal of unwanted data without the need for retraining from scratch. While the Neural-Tangent-Kernel-based (NTK-based) unlearning method excels in performance, it suffers from significant computational complexity, especially for large-scale models and datasets. Our work introduces ``Fast-NTK,'' a novel NTK-based unlearning algorithm that significantly reduces the computational complexity by incorporating parameter-efficient fine-tuning methods, such as fine-tuning batch normalization layers in a CNN or visual prompts in a vision transformer. Our experimental results demonstrate scalability to much larger neural networks and datasets (e.g., 88M parameters; 5k images), surpassing the limitations of previous full-model NTK-based approaches designed for smaller cases (e.g., 8M parameters; 500 images). Notably, our approach maintains a performance comparable to the traditional method of retraining on the retain set alone. Fast-NTK can thus enable for practical and scalable NTK-based unlearning in deep neural networks.

Keywords

Cite

@article{arxiv.2312.14923,
  title  = {Fast-NTK: Parameter-Efficient Unlearning for Large-Scale Models},
  author = {Guihong Li and Hsiang Hsu and Chun-Fu Chen and Radu Marculescu},
  journal= {arXiv preprint arXiv:2312.14923},
  year   = {2023}
}

Comments

6 pages, 1 figure

R2 v1 2026-06-28T14:00:13.900Z