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GraphPlan: Story Generation by Planning with Event Graph

2021-02-05 03:18:55
Hong Chen, Raphael Shu, Hiroya Takamura, Hideki Nakayama

Abstract

Story generation is a task that aims to automatically produce multiple sentences to make up a meaningful story. This task is challenging because it requires high-level understanding of semantic meaning of sentences and causality of story events. Naive sequence-to-sequence models generally fail to acquire such knowledge, as the logical correctness can hardly be guaranteed in a text generation model without the strategic planning. In this paper, we focus on planning a sequence of events assisted by event graphs, and use the events to guide the generator. Instead of using a sequence-to-sequence model to output a storyline as in some existing works, we propose to generate an event sequence by walking on an event graph. The event graphs are built automatically based on the corpus. To evaluate the proposed approach, we conduct human evaluation both on event planning and story generation. Based on large-scale human annotation results, our proposed approach is shown to produce more logically correct event sequences and stories.

Abstract (translated)

URL

https://arxiv.org/abs/2102.02977

PDF

https://arxiv.org/pdf/2102.02977.pdf


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