The Challenge and Reward of Fair Play in Narrative: A Computational Approach
Eitan Wagner, Renana Keydar, Omri Abend

TL;DR
This paper formalizes the balance of surprise and coherence in storytelling using an information-theoretic framework, highlighting the importance of fair play and validating metrics with language models and human studies.
Contribution
It introduces a novel theoretical framework for understanding narrative qualities and operationalizes it with language models, revealing challenges in achieving fair play.
Findings
Models succeed in surprise and coherence but struggle with fair play.
Surprise and coherence are not positively correlated across stories.
Human validation confirms the metrics capture meaningful narrative qualities.
Abstract
Good storytelling involves surprise -- unpredictability in how the story unfolds -- and sense-making, the requirement that the story forms a coherent sequence. However, to date, these two qualities have largely been addressed in isolation. We formalize these qualities and their relationship in an information-theoretic framework, using detective fiction as a paradigm case of narratives in which a hidden truth is discovered through reasoning. Our central theoretical result shows that surprise and coherence must trade off for any *single* reader model, but can coexist when two reader modes are distinguished: a pre-revelation mode that forms expectations while the ending is unknown, and a post-resolution hindsight mode that re-evaluates the story after the culprit is revealed. The balance of these two dimensions is realized in the common requirement of *fair play*, giving the reader a…
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