AI RESEARCH
Unpredictable Safety: Domain-Dependent Compliance and the Transparency Gap in Open-Weight LLMs
arXiv CS.AI
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ArXi:2606.04035v1 Announce Type: cross We present a systematic study of domain-dependent safety behavior in open-weight LLMs: 7 standardized experiments across 7 ethical domains, testing 5 models (12B--70B) in 4,200 interactions with dual-judge validation. Using a dual-condition methodology, each scenario tested in both an analytical framing (identify the harm) and an operational framing (help commit the harm), we find compliance rates vary from 14.7% (human trafficking) to 85.7% (surveillance design), a 71-percentage-point span with non-overlapping cluster-bootstrapped 95% CIs.