Machines acquire scientific taste from institutional traces
arXiv cs.AI / 3/18/2026
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Key Points
- A new study demonstrates that fine-tuning language models on journal publication decisions enables them to exhibit evaluative judgment about which ideas deserve pursuit, a capability not captured by frontier models or unadapted human experts.
- In a held-out benchmark using four quality tiers for research pitches in management, frontier models averaged 31% accuracy while panels of editors reached 42% by majority vote.
- Fine-tuned models trained on years of publication records surpass frontier models and expert panels, with the best single model achieving 59% accuracy and calibrated confidence, including 100% accuracy on its highest-confidence predictions.
- The mechanism transfers to untrained pairwise comparisons and one-sentence summaries, and when trained on economics publication records, reaches about 70% accuracy.
- The findings suggest a scalable method to triage the expanding volume of scientific production across disciplines where quality cannot be easily verified, effectively depositing scientific taste into the institutional record.
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