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Modeling Event Salience in Narratives via Barthes' Cardinal Functions

机译:通过Barthes Cardinal功能建模叙事中的事件显着性

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Events in a narrative differ in salience: some are more important to the story than others. Estimating event salience is useful for tasks such as story generation, and as a tool for text analysis in narratology and folkloristics. To compute event salience without any annotations, we adopt Barthes' definition of event salience and propose several unsupervised methods that require only a pre-trained language model. Evaluating the proposed methods on folktales with event salience annotation, we show that the proposed methods outperform baseline methods and find fine-tuning a language model on narrative texts is a key factor in improving the proposed methods.
机译:叙事中的事件差异差异:一些对故事比其他人更重要。 估算事件突出性对于诸如故事生成的任务是有用的,作为叙事学和民俗学中的文本分析的工具。 为了计算没有任何注释的事件显着性,我们采用了大拇指的事件突出的定义,并提出了几种无监督的方法,只需要预先训练的语言模型。 通过事件Parience注释评估拟议方法,我们表明所提出的方法优于基线方法,并找到微调叙述文本语言模型是提高所提出的方法的关键因素。

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