The AI Fiction Paradox
arXiv cs.AI / 3/17/2026
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Key Points
- The AI-Fiction Paradox posits that AI models trained on massive fiction corpora need more fiction data to improve while still struggling to generate authentic fiction themselves.
- It identifies three core challenges: narrative causation (events must feel surprising in the moment and retrospectively inevitable, conflicting with forward-generation in transformer architectures), informational revaluation (fiction requires retrospective reweighting of narrative details beyond statistical salience and current attention mechanisms), and multi-scale emotional architecture (coordinating sentiment across word, sentence, scene, and arc levels).
- The paper links these challenges to licensing and legal barriers in acquiring modern fiction and explains why replication remains difficult.
- It argues that overcoming these obstacles could unlock powerful cognitive and emotional modeling, but also raise risks of large-scale manipulation.
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