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Multi-Paradigm Collaborative Adversarial Attack Against Multi-Modal Large Language Models

About

The rapid progress of Multi-Modal Large Language Models (MLLMs) has significantly advanced downstream applications. However, this progress also exposes serious transferable adversarial vulnerabilities. In general, existing adversarial attacks against MLLMs typically rely on surrogate models trained within a single learning paradigm and perform independent optimisation in their respective feature spaces. This straightforward setting naturally restricts the richness of feature representations, delivering limits on the search space and thus impeding the diversity of adversarial perturbations. To address this, we propose a novel Multi-Paradigm Collaborative Attack (MPCAttack) framework to boost the transferability of adversarial examples against MLLMs. In principle, MPCAttack aggregates semantic representations, from both visual images and language texts, to facilitate joint adversarial optimisation on the aggregated features through a Multi-Paradigm Collaborative Optimisation (MPCO) strategy. By performing contrastive matching on multi-paradigm features, MPCO adaptively balances the importance of different paradigm representations and guides the global perturbation optimisation, effectively alleviating the representation bias. Extensive experimental results on multiple benchmarks demonstrate the superiority of MPCAttack, indicating that our solution consistently outperforms state-of-the-art methods in both targeted and untargeted attacks on open-source and closed-source MLLMs. The code is released at https://github.com/LiYuanBoJNU/MPCAttack.

Yuanbo Li, Tianyang Xu, Cong Hu, Tao Zhou, Xiao-Jun Wu, Josef Kittler• 2026

Related benchmarks

TaskDatasetResultRank
Untargeted Adversarial AttackImageNet
ASR (Average)99.3
36
Targeted Adversarial AttackImageNet
ASR (Average)88.7
30
Untargeted Adversarial AttackFlickr30K
ASR92.52
30
Untargeted Adversarial AttackFlickr30K 1,000 images (test)
ASR65.22
30
Targeted Adversarial AttackFlickr30K
ASR46.3
25
Targeted Adversarial AttackFlickr30K 1,000 images (test)
Attack Success Rate (ASR)24.78
25
Adversarial AttackMME Targeted
ASR59.81
15
Adversarial AttackMME Untargeted
ASR83.49
15
Adversarial AttackMME Targeted v1.0 (test)
Success Rate (GPT-4o)63.42
3
Adversarial AttackMME Untargeted v1.0 (test)
GPT-4o Attack Success Rate48.88
3
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