Silent Alarm: A J-Space Protocol for Comparing Danger Recognition Across Models and Quantization Levels
Jailbreak-robustness research typically evaluates safety through generated responses using an LLM-as-judge approach. Such evaluations, however, are sensitive to the benchmark's grading procedure and capture only observed behavior on a given set of attacks, without directly revealing the hidden fragility of the underlying safety mechanisms. This work proposes JADR (Jacobian Assessment of Danger Recognition), a protocol that measures a model's internal representation through Jacobian space (J-space, a recently proposed workspace of verbalizable concepts) before the first response token is genera
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- LinkedLinked via arxiv author · 85%Roman Prosvirnin →
“Silent Alarm: A J-Space Protocol for Comparing Danger Recognition Across Models and Quantization Levels”
- LinkedLinked via arxiv author · 85%Victor Minchenkov →
“Silent Alarm: A J-Space Protocol for Comparing Danger Recognition Across Models and Quantization Levels”
- LinkedLinked via arxiv author · 85%Alexey Soldatov →
“Silent Alarm: A J-Space Protocol for Comparing Danger Recognition Across Models and Quantization Levels”
- LinkedLinked via arxiv author · 85%Vladimir Bashun →
“Silent Alarm: A J-Space Protocol for Comparing Danger Recognition Across Models and Quantization Levels”
