DualOptim: Enhancing Efficacy and Stability in Machine Unlearning with Dual Optimizers

Existing machine unlearning (MU) approaches exhibit significant sensitivity to hyperparameters, requiring meticulous tuning that limits practical deployment. In this work, we first empirically demonstrate the instability and suboptimal performance of existing popular MU methods when deployed in different scenarios. To address this issue, we propose Dual Optimizer (DualOptim), which incorporates adaptive learning rate and decoupled momentum factors. Empirical and theoretical evidence demonstrates that DualOptim contributes to effective and stable unlearning. Through extensive experiments, we show that DualOptim can significantly boost MU efficacy and stability across diverse tasks, including image classification, image generation, and large language models, making it a versatile approach to empower existing MU algorithms.
View on arXiv@article{zhong2025_2504.15827, title={ DualOptim: Enhancing Efficacy and Stability in Machine Unlearning with Dual Optimizers }, author={ Xuyang Zhong and Haochen Luo and Chen Liu }, journal={arXiv preprint arXiv:2504.15827}, year={ 2025 } }