Evaluating J-space entropy as an error predictor across 7 datasets on Qwen3-4B [R]
Anthropic’s Jacobian Lens work introduced a way to inspect verbalizable representations inside language models. Follow-up experiments suggested that entropy in this internal “workspace” might help identify confidently incorrect answers.
I tested that hypothesis on Qwen3-4B across ~11,400 examples from seven distinct datasets, including TriviaQA, PopQA, NQ-Open, TruthfulQA, HotpotQA, GSM8K, and CommonSenseQA.
Three main findings:
- It can complement output confidence on factual retrieval.
On datasets such as PopQA, workspace entropy sometimes improved error-routing precision at low review budgets, particularly among answers that were already high-confidence.
- It does not reliably detect internalized misconceptions.
On TruthfulQA, workspace entropy was substantially weaker than output confidence. Incorrect answers could still have a clean, low-entropy internal representation.
- Its calibration is highly task-dependent.
A threshold calibrated on TriviaQA failed on GSM8K because correct mathematical reasoning had much higher baseline entropy. Multiple-choice formatting also weakened the signal substantially on CommonSenseQA.
The overall result is narrower than “internal entropy detects hallucinations”: it may be a useful complementary routing signal for confidently incorrect factual answers, but it does not behave like a task-general error detector.
This is currently a single-model study, so cross-model validation is the most important next step. The repository contains the full methodology, limitations, raw data, metrics, plots, and reproducible notebook:
https://github.com/dasjoms/jspace-hallucination-eval
I‘d be interested in feedback on the experimental design if anyone feels like giving their thoughts.
Note: I already posted this to r/LocalLLaMa yesterday but think this might also fit here.
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