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Probabilistic Task Content Modeling for Episodic Textual Narratives

机译:情节性文本叙事的概率任务内容建模

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摘要

Episodic knowledge is often stored in the form of textual narratives written in natural language. However, a large repository of such narratives will contain both repetitive and novel knowledge. In this paper, we propose an approach for discovering interesting pieces of knowledge by using a priori task knowledge. By considering the narratives as generated by an underlying task structure, the elements of the task can be regarded as topics that generate the text. Then, by capturing task content in a probabilistic model, the model can be used, e.g., to identify the semantic orientation of textual phrases. An evaluation for a real world corpus of episodic narratives provides strong evidence for the feasibility of the proposed approach.
机译:情景知识通常以用自然语言编写的文字叙述形式存储。但是,大量此类叙述的资料库将包含重复性知识和新颖性知识。在本文中,我们提出了一种通过使用先验任务知识发现有趣的知识片段的方法。通过考虑底层任务结构生成的叙述,可以将任务的元素视为生成文本的主题。然后,通过在概率模型中捕获任务内容,该模型可以用于例如识别文本短语的语义取向。对真实世界的情节叙述语料库的评估为所提出的方法的可行性提供了有力的证据。

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