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Guiding Neural Story Generation with Reader Models

Authors :
Peng, Xiangyu
Xie, Kaige
Alabdulkarim, Amal
Kayam, Harshith
Dani, Samihan
Riedl, Mark O.
Publication Year :
2021

Abstract

Automated storytelling has long captured the attention of researchers for the ubiquity of narratives in everyday life. However, it is challenging to maintain coherence and stay on-topic toward a specific ending when generating narratives with neural language models. In this paper, we introduce Story generation with Reader Models (StoRM), a framework in which a reader model is used to reason about the story should progress. A reader model infers what a human reader believes about the concepts, entities, and relations about the fictional story world. We show how an explicit reader model represented as a knowledge graph affords story coherence and provides controllability in the form of achieving a given story world state goal. Experiments show that our model produces significantly more coherent and on-topic stories, outperforming baselines in dimensions including plot plausibility and staying on topic.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2112.08596
Document Type :
Working Paper