Probabilistic Model of Narratives Over Topical Trends in Social Media: A Discrete Time Model

Toktam A. Oghaz, Ece C. Mutlu, Jasser Jasser, Niloofar Yousefi, I. Garibay
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引用次数: 13

Abstract

Online social media platforms are turning into the prime source of news and narratives about worldwide events. However, a systematic summarization-based narrative extraction that can facilitate communicating the main underlying events is lacking. To address this issue, we propose a novel event-based narrative summary extraction framework. Our proposed framework is designed as a probabilistic topic model, with categorical time distribution, followed by extractive text summarization. Our topic model identifies topics' recurrence over time with a varying time resolution. This framework not only captures the topic distributions from the data, but also approximates the user activity fluctuations over time. Furthermore, we define significance-dispersity trade-off (SDT) as a comparison measure to identify the topic with the highest lifetime attractiveness in a timestamped corpus. We evaluate our model on a large corpus of Twitter data, including more than one million tweets in the domain of the disinformation campaigns conducted against the White Helmets of Syria. Our results indicate that the proposed framework is effective in identifying topical trends, as well as extracting narrative summaries from text corpus with timestamped data.
社交媒体主题趋势叙事的概率模型:一个离散时间模型
在线社交媒体平台正在成为全球事件新闻和叙述的主要来源。然而,基于系统总结的叙述提取却缺乏能够促进主要潜在事件交流的方法。为了解决这个问题,我们提出了一种新的基于事件的叙事摘要提取框架。我们提出的框架被设计成一个概率主题模型,具有分类时间分布,然后是抽取文本摘要。我们的主题模型用不同的时间分辨率识别主题随时间的重复。该框架不仅从数据中捕获主题分布,而且还近似于用户活动随时间的波动。此外,我们将显著性-分散性权衡(SDT)定义为一种比较度量,以确定在时间戳语料库中具有最高终身吸引力的主题。我们在大量Twitter数据库上评估了我们的模型,其中包括针对叙利亚白盔组织(White Helmets)的虚假信息运动领域的100多万条推文。我们的研究结果表明,所提出的框架在识别主题趋势以及从带有时间戳数据的文本语料库中提取叙事摘要方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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