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Robust MLLM Unlearning via Visual Knowledge Distillation

About

Recently, machine unlearning approaches have been proposed to remove sensitive information from well-trained large models. However, most existing methods are tailored for LLMs, while MLLM-oriented unlearning remains at its early stage. Inspired by recent studies exploring the internal mechanisms of MLLMs, we propose to disentangle the visual and textual knowledge embedded within MLLMs and introduce a dedicated approach to selectively erase target visual knowledge while preserving textual knowledge. Unlike previous unlearning methods that rely on output-level supervision, our approach introduces a Visual Knowledge Distillation (VKD) scheme, which leverages intermediate visual representations within the MLLM as supervision signals. This design substantially enhances both unlearning effectiveness and model utility. Moreover, since our method only fine-tunes the visual components of the MLLM, it offers significant efficiency advantages. Extensive experiments demonstrate that our approach outperforms state-of-the-art unlearning methods in terms of both effectiveness and efficiency. Moreover, we are the first to evaluate the robustness of MLLM unlearning against relearning attacks.

Yuhang Wang, Zhenxing Niu, Haoxuan Ji, Guangyu He, Haichang Gao, Gang Hua• 2025

Related benchmarks

TaskDatasetResultRank
Visual Question AnsweringCLEAR 1.0 (Retain)
Accuracy70.9
32
Visual Question AnsweringMLLMU-Bench Forget 1.0
Accuracy29.8
16
Visual Question AnsweringCLEAR Forget 1.0
Accuracy34.2
16
Question AnsweringMLLMU-Bench Forget 1.0
Accuracy54.6
16
Question AnsweringCLEAR Forget 1.0
R-L Score0.349
16
Question AnsweringCLEAR 1.0 (Retain)
R-L Score0.346
16
Visual Question AnsweringMLLMU-Bench Retain 1.0
Accuracy56
16
Visual Question AnsweringMLLMU-Bench Real-world 1.0
Accuracy75.4
16
Question AnsweringMLLMU-Bench 1.0 (Retain)
Accuracy56.4
16
Question AnsweringMLLMU-Bench Real-world 1.0
Accuracy77.4
16
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