Compiling Activation Steering into Weights via Null-Space Constraints for Stealthy Backdoors
arXiv cs.CL / 4/15/2026
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Key Points
- The paper studies supply-chain risks for safety-aligned LLM deployments, focusing on backdoored checkpoints that pass standard evaluations but jailbreak when a hidden trigger is supplied.
- It proposes a new weight-editing backdoor technique that targets internal representation “steering vectors” rather than forcing an immediate token prefix, improving reliability beyond a few decoding steps.
- The method compiles the steering behavior into a persistent weight modification that activates only when the trigger is present, using a null-space constraint to keep the edit dormant on clean inputs.
- It claims efficiency advantages, including needing only a small number of examples and providing a closed-form solution, while reportedly maintaining benign utility and non-triggered safety across multiple models and jailbreak benchmarks.
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