AI RESEARCH
SafeSeek: Universal Attribution of Safety Circuits in Language Models
arXiv CS.AI
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ArXi:2603.23268v1 Announce Type: cross Mechanistic interpretability reveals that safety-critical behaviors (e.g., alignment, jailbreak, backdoor) in Large Language Models (LLMs) are grounded in specialized functional components. However, existing safety attribution methods struggle with generalization and reliability due to their reliance on heuristic, domain-specific metrics and search algorithms. To address this, we propose \ourmethod, a unified safety interpretability framework that identifies functionally complete safety circuits in LLMs via optimization.