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Automated Story Generation as Question-Answering

2021-12-07 16:32:30
Louis Castricato, Spencer Frazier, Jonathan Balloch, Nitya Tarakad, Mark Riedl

Abstract

Neural language model-based approaches to automated story generation suffer from two important limitations. First, language model-based story generators generally do not work toward a given goal or ending. Second, they often lose coherence as the story gets longer. We propose a novel approach to automated story generation that treats the problem as one of generative question-answering. Our proposed story generation system starts with sentences encapsulating the final event of the story. The system then iteratively (1) analyzes the text describing the most recent event, (2) generates a question about "why" a character is doing the thing they are doing in the event, and then (3) attempts to generate another, preceding event that answers this question.

Abstract (translated)

URL

https://arxiv.org/abs/2112.03808

PDF

https://arxiv.org/pdf/2112.03808.pdf


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