Cross-Context Review: Improving LLM Output Quality by Separating Production and Review Sessions
arXiv cs.CL / 3/13/2026
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Key Points
- CCR introduces a review conducted in a fresh session with no access to the production conversation history to reduce self-review bias.
- In a controlled experiment with 30 artifacts and 150 injected errors across four conditions, CCR achieved an F1 of 28.6%, outperforming SR (24.6%, p=0.008, d=0.52), SR2 (21.7%, p<0.001, d=0.72), and SA (23.8%, p=0.004, d=0.57).
- The SR2 result shows that reviewing twice in the same session did not beat reviewing once (p=0.11), which rules out repetition as an explanation for CCR's advantage.
- CCR works with any model, needs no infrastructure, and costs only one extra session, making it a practical approach for improving LLM output quality.
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