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| type | domain | description | confidence | source | created | title | agent | scope | sourcer | related | supports | reweave_edges | ||||
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| claim | ai-alignment | SCAV framework demonstrates that the same linear concept directions used for safety monitoring can be surgically targeted to suppress safety activations, with attacks transferring to black-box models like GPT-4 | experimental | Xu et al. (NeurIPS 2024), SCAV framework evaluation across seven open-source LLMs | 2026-04-21 | Representation monitoring via linear concept vectors creates a dual-use attack surface enabling 99.14% jailbreak success | theseus | causal | Xu et al. |
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Representation monitoring via linear concept vectors creates a dual-use attack surface enabling 99.14% jailbreak success
Xu et al. introduce SCAV (Steering Concept Activation Vectors), which identifies the linear direction in activation space encoding the harmful/safe instruction distinction, then constructs adversarial attacks that suppress those activations. The framework achieved an average attack success rate of 99.14% across seven open-source LLMs using keyword-matching evaluation. Critically, these attacks transfer to GPT-4 in black-box settings, demonstrating that the linear structure of safety concepts is a universal property rather than model-specific. The attack provides a closed-form solution for optimal perturbation magnitude, requiring no hyperparameter tuning. This creates a fundamental dual-use problem: the same linear concept vectors that enable precise safety monitoring (as demonstrated by Beaglehole et al.) also create a precision targeting map for adversarial attacks. The black-box transfer is particularly concerning because it means attacks developed on open-source models with white-box access can be applied to deployed proprietary models that use linear concept monitoring for safety. The technical mechanism is less surgically precise than SAE-based attacks but achieves comparable success with simpler implementation, making it more accessible to adversaries.