AI RESEARCH
Thinking Wrong in Silence: Backdoor Attacks on Continuous Latent Reasoning
arXiv CS.AI
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ArXi:2604.00770v1 Announce Type: cross A new generation of language models reasons entirely in continuous hidden states, producing no tokens and leaving no audit trail. We show that this silence creates a fundamentally new attack surface. ThoughtSteer perturbs a single embedding vector at the input layer; the model's own multi-pass reasoning amplifies this perturbation into a hijacked latent trajectory that reliably produces the attacker's chosen answer, while remaining structurally invisible to every token-level defense.