Salience Vectors for Measuring Distance between Stories

Authors

  • Rachelyn Farrell University of Kentucky
  • Mira Fisher University of Kentucky
  • Stephen G. Ware University of Kentucky

DOI:

https://doi.org/10.1609/aiide.v18i1.21952

Keywords:

Story Similarity, Salience, Narrative Planning, Intelligent Narrative Technologies

Abstract

Narrative planners generate sequences of actions that represent story plots given a story domain model. This is a useful way to create branching stories for interactive narrative systems that maintain logical consistency across multiple storylines with different content. There is a need for story comparison techniques that can enable systems like experience managers and domain authoring tools to reason about similarities and differences between multiple stories or branches. We present an algorithm for summarizing narrative plans as numeric vectors based on a cognitive model of human story perception. The vectors encode important story information and can be compared using standard distance functions to quantify the overall semantic difference between two stories. We show that this distance metric is highly accurate based on human annotations of story similarity, and compare it to several alternative approaches. We also explore variations of our method in an attempt to broaden its applicability to other types of story systems.

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Published

2022-10-11

How to Cite

Farrell, R., Fisher, M., & Ware, S. G. (2022). Salience Vectors for Measuring Distance between Stories. Proceedings of the AAAI Conference on Artificial Intelligence and Interactive Digital Entertainment, 18(1), 95-104. https://doi.org/10.1609/aiide.v18i1.21952