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Style over Story: Measuring LLM Narrative Preferences via Structured Selection
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We introduce a constraint-selection-based experiment design for measuring narrative preferences of Large Language Models (LLMs). This design offers an interpretable lens on LLMs' narrative selection behavior. We developed a library of 200 narratology-grounded constraints and prompted selections from six LLMs under three different instruction types: basic, quality-focused, and creativity-focused. Findings demonstrate that models consistently prioritize Style over narrative content elements like Event, Character, and Setting. Style preferences remain stable across models and instruction types, whereas content elements show cross-model divergence and instructional sensitivity. These results suggest that LLMs have latent narrative preferences, which should inform how the NLP community evaluates and deploys models in creative domains.
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Narrative Landscape: Mapping Narrative Dispositions Across LLMs
The study maps LLM narrative selection behaviors onto a 'Narrative Landscape' using consistency (Jaccard) and diversity (inverse Simpson) metrics, revealing a rigidity-exploration spectrum across models and instructio...
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