LGSep 18, 2025

CUFG: Curriculum Unlearning Guided by the Forgetting Gradient

arXiv:2509.14633v12 citationsh-index: 9
Originality Incremental advance
AI Analysis

This addresses privacy and security concerns in AI by improving unlearning stability, though it appears incremental as it builds on existing fine-tuning-based methods.

The paper tackles the problem of machine unlearning by proposing CUFG, a framework that enhances stability through a gradient corrector and curriculum scheduling, narrowing the gap with retraining methods and improving effectiveness and reliability in various forgetting scenarios.

As privacy and security take center stage in AI, machine unlearning, the ability to erase specific knowledge from models, has garnered increasing attention. However, existing methods overly prioritize efficiency and aggressive forgetting, which introduces notable limitations. In particular, radical interventions like gradient ascent, influence functions, and random label noise can destabilize model weights, leading to collapse and reduced reliability. To address this, we propose CUFG (Curriculum Unlearning via Forgetting Gradients), a novel framework that enhances the stability of approximate unlearning through innovations in both forgetting mechanisms and data scheduling strategies. Specifically, CUFG integrates a new gradient corrector guided by forgetting gradients for fine-tuning-based unlearning and a curriculum unlearning paradigm that progressively forgets from easy to hard. These innovations narrow the gap with the gold-standard Retrain method by enabling more stable and progressive unlearning, thereby improving both effectiveness and reliability. Furthermore, we believe that the concept of curriculum unlearning has substantial research potential and offers forward-looking insights for the development of the MU field. Extensive experiments across various forgetting scenarios validate the rationale and effectiveness of our approach and CUFG. Codes are available at https://anonymous.4open.science/r/CUFG-6375.

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