基于离子交换机制的不同角色故事结局生成器

Xinyu Jiang, Qi Zhang, Chongyang Shi, Kaiying Jiang, Liang Hu, Shoujin Wang
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引用次数: 0

摘要

故事结局生成旨在为给定的故事情境生成合理的结局。这一领域的现有研究大多侧重于创造连贯或多样化的故事结局,而忽略了不同的角色可能导致不同的故事结局。在本文中,我们提出了一个面向角色的故事结局生成器(CoSEG),为故事中的每个角色定制一个结局。具体来说,我们首先提出了一个角色建模模块,通过从故事情境中提取的描述性经验来学习角色的个性。然后,受化学反应中的离子交换机制的启发,我们设计了一个新的矢量断裂/形成模块,通过类比的信息交换过程来学习每个字符与相应上下文之间的内在相互作用。最后,我们利用注意机制来学习有效的角色特定交互,并将每个交互馈送到解码器中以生成面向角色的结尾。大量的实验结果和案例研究表明,与现有方法相比,CoSEG在生成结局的质量上取得了显著的提高,并且有效地为不同的角色定制了结局。
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An Ion Exchange Mechanism Inspired Story Ending Generator for Different Characters
Story ending generation aims at generating reasonable endings for a given story context. Most existing studies in this area focus on generating coherent or diversified story endings, while they ignore that different characters may lead to different endings for a given story. In this paper, we propose a Character-oriented Story Ending Generator (CoSEG) to customize an ending for each character in a story. Specifically, we first propose a character modeling module to learn the personalities of characters from their descriptive experiences extracted from the story context. Then, inspired by the ion exchange mechanism in chemical reactions, we design a novel vector breaking/forming module to learn the intrinsic interactions between each character and the corresponding context through an analogical information exchange procedure. Finally, we leverage the attention mechanism to learn effective character-specific interactions and feed each interaction into a decoder to generate character-orient endings. Extensive experimental results and case studies demonstrate that CoSEG achieves significant improvements in the quality of generated endings compared with state-of-the-art methods, and it effectively customizes the endings for different characters.
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