Workspace noise catches high-confidence errors in Qwen3-4B but fails on myths
A researcher tested Anthropic's J-Space hallucination detection method across 7 datasets and found it excels at catching confident factual errors but breaks entirely on internalized false beliefs and mathematical reasoni
A researcher tested Anthropic's J-Space hallucination detection method on Qwen3-4B across 11,400 examples spanning 7 different dataset distributions and found critical limits in how the technique transfers across task types. The work builds on [Anthropic's recent paper on Global Workspaces](https://...
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- Source type
- Primary publication (lab/vendor blog) — our analysis + implication
- Source link
- r/localllama
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- UTC
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