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CATA: Continual Machine Unlearning via Conflict-Averse Task Arithmetic

About

Vision-language models (VLMs) have shown remarkable ability in aligning visual and textual representations, enabling a wide range of multimodal applications. However, their large-scale training data inevitably raises concerns about privacy, copyright, and undesirable content, creating a strong need for machine unlearning. While existing studies mainly focus on single-shot unlearning, practical VLM deployment often involves sequential removal requests over time, giving rise to continual machine unlearning. In this work, we make the first attempt to study continual unlearning for VLMs and identify three key challenges in this setting: effectiveness in removing target knowledge, fidelity in preserving retained model utility, and persistence in preventing knowledge re-emergence under sequential updates. To address these challenges, we propose CATA, a conflict-averse task arithmetic method that represents each forget request as an unlearning task vector. By maintaining historical task vectors and performing sign-aware conflict-averse aggregation, CATA suppresses conflicting update components that may weaken previous forgetting effects. Extensive experiments under both single-shot and continual settings show that CATA outperforms baselines in terms of forgetting effectiveness, model fidelity, and forgetting persistence.

Shen Lin, Junhao Dong, Rongjie Chen, Xiaoyu Zhang, Li Xu, Xiaofeng Chen• 2026

Related benchmarks

TaskDatasetResultRank
Image ClassificationFood-101
Accuracy91.79
570
Image ClassificationObjectNet
Accuracy51.19
251
Image ClassificationFood
Accuracy91.23
152
Image ClassificationSTL
Top-1 Acc99.41
89
Continual UnlearningImageNet-1K
Retention Score70.71
60
Continual UnlearningCIFAR-100
Retention Accuracy (RA)65.39
58
Single-class UnlearningCIFAR-10
Retain Accuracy69.46
42
Image ClassificationSTL-10
Classification Error97.16
19
Image ClassificationImageNet
Target Accuracy31.55
18
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