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Frowning Frodo, Wincing Leia, and a Seriously Great Friendship: Learning to Classify Emotional Relationships of Fictional Characters

机译:皱眉佛罗一起,威尼娅和一个严重的友谊:学会分类虚构人物的情感关系

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The development of a fictional plot is centered around characters who closely interact with each other forming dynamic social networks. In literature analysis, such networks have mostly heen analyzed without particular relation types or focusing on roles which the characters take with respect to each other. We argue that an important aspect for the analysis of stories and their development is the emotion between characters. In this paper, we combine these aspects into a unified framework to classify emotional relationships of fictional characters. We formalize it as a new task and describe the annotation of a corpus, based on fan-fiction short stories. The extraction pipeline which we propose consists of character identification (which we treat as given by an oracle here) and the relation classification. For the latter, we provide results using several approaches previously proposed for relation identification with neural methods. The best result of 0.45 F_1 is achieved with a GRU with character position indicators on the task of predicting undirected emotion relations in the associated social network graph.
机译:虚构情节的发展归属于与彼此密切互动形成动态社交网络的角色。在文献分析中,这种网络大多数没有特定关系类型或专注于角色相互作用的角色。我们认为,分析故事及其发展的一个重要方面是人物之间的情感。在本文中,我们将这些方面与统一的框架相结合,以分类虚构人物的情感关系。我们将其形式形式化为新任务,并根据粉丝小说短篇小说描述了语料库的注释。我们提出的提取管道由字符识别(我们在这里由Oracle给出的人)和关系分类。对于后者,我们提供了先前提出了用神经方法相关识别的几种方法的结果。通过GRU实现了0.45F_1的最佳结果,该GRU与特征位置指示器上的任务预测相关社交网络图中的无向情绪关系。

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