Instructions shape Production of Language, not Processing · DeepSignal
Instructions shape Production of Language, not Processing arXiv cs.CL · Andreas Waldis, Leshem Choshen, Yufang Hou, Yotam Perlit 4d ago · ~1 min· 5/13/2026· en· 2Instructions primarily influence language production mechanisms rather than processing in language models.
Key Points Asymmetry exists between language processing and production. Instruction tokens significantly shape output token behavior. Findings highlight the need for joint assessment of model internals. Reader Mode is being prepared.
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Low signal — niche or repeat coverage.
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Source authority 20% 80
Community heat 20% 0
Technical impact 30% 33
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≥75 high · 50–74 medium · <50 low
Why Featured
This finding signals that optimizing instruction design can enhance language model output quality, crucial for developers, PMs, and investors focusing on AI applications.