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Deep Dungeons and Dragons: Learning Character-Action Interactions from Role-Playing Game Transcripts

机译:《龙与地下城》:从角色扮演游戏的笔录中学习角色与动作的互动

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An essential aspect to understanding narratives is to grasp the interaction between characters in a story and the actions they take. We examine whether computational models can capture this interaction, when both character attributes and actions are expressed as complex natural language descriptions. We propose role-playing games as a testbed for this problem, and introduce a large corpus of game transcripts collected from online discussion forums. Using neural language models which combine character and action descriptions from these stories, we show that we can learn the latent ties. Action sequences are better predicted when the character performing the action is also taken into account, and vice versa for character attributes.
机译:理解叙事的一个重要方面是掌握故事中人物与他们所采取的行动之间的互动。当字符属性和动作都表示为复杂的自然语言描述时,我们检查计算模型是否可以捕获这种交互。我们建议使用角色扮演游戏作为此问题的试验台,并介绍从在线讨论论坛收集的大量游戏成绩单。使用结合了这些故事中的角色和动作描述的神经语言模型,我们表明我们可以学习潜在的联系。当还考虑了执行动作的角色时,可以更好地预测动作序列,反之亦然。

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