Long Story Generation via Knowledge Graph and Literary Theory
Ge Shi, Kaiyu Huang, Guochen Feng

TL;DR
This paper presents a multi-agent story generation framework that leverages knowledge graphs and literary theory to produce coherent, engaging long stories with improved thematic consistency and logical flow.
Contribution
It introduces a novel multi-agent architecture with memory modules and a literary theory-based framework to enhance long story generation quality.
Findings
Higher story coherence and thematic consistency.
Improved story engagement and logical flow.
Effective use of knowledge graphs and literary theory.
Abstract
The generation of a long story consisting of several thousand words is a sub-task in the field of long text generation~(LTG). Previous research has addressed this challenge through outline-based generation, which employs a multi-stage method for generating outlines into stories. However, this approach suffers from two common issues: almost inevitable theme drift caused by the loss of memory of previous outlines, and tedious plots with incoherent logic that are less appealing to human readers. In this paper, we propose the multi-agent Story Generator structure to improve the multi-stage method, using large language models~(LLMs) as the core components of agents. To avoid theme drift, we introduce a memory storage model comprising two components: a long-term memory storage that identifies the most important memories, thereby preventing theme drift; and a short-term memory storage that…
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