用功能图式理解社交媒体叙事

Xinru Yan, Aakanksha Naik, Yohan Jo, C. Rosé
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引用次数: 6

摘要

我们提出了一种新的理解社交媒体叙事的方法,重点是学习“功能故事图式”,它由一系列刻板的功能结构组成。我们开发了一个无监督的管道来提取模式,并将我们的方法应用于Reddit帖子,以检测具有不同子Reddit特征的示意图结构。我们通过人工解释验证模式,并通过文本分类任务评估它们的实用性。我们的实验表明,提取的模式捕获了不同subreddits中不同的结构模式,将几个模型的分类性能平均提高了2.4%。我们还观察到,这些模式充当了揭示社区规范的镜头。
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Using Functional Schemas to Understand Social Media Narratives
We propose a novel take on understanding narratives in social media, focusing on learning ”functional story schemas”, which consist of sets of stereotypical functional structures. We develop an unsupervised pipeline to extract schemas and apply our method to Reddit posts to detect schematic structures that are characteristic of different subreddits. We validate our schemas through human interpretation and evaluate their utility via a text classification task. Our experiments show that extracted schemas capture distinctive structural patterns in different subreddits, improving classification performance of several models by 2.4% on average. We also observe that these schemas serve as lenses that reveal community norms.
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