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Dynamic Topic Models for Retrospective Event Detection: A Study on Soviet Opposition-Leaning Media

机译:追溯事件检测的动态主题模型:苏联反对派媒体的研究

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In recent years, there has been an increasing interest in digital humanities. This interest is justified by the development of natural language processing tools and the emergence of digitized text collections of documents in different fields of knowledge, for example, literature, art, philosophy, and history. In this paper, we applied unsupervised topic modeling to the Bulletin of Opposition, the journal of Soviet opposition published by Trotskyists in Paris from 1929 to 1941, to analyze the main trends in the Russian opposition-leaning media. We identified topic classes using models based on Latent Dirichlet Allocation and examined Dynamic Topic Models as a tool to single out the main issues of interest for historical research. Applying topic modeling and statistical methods, we proposed an approach to Retrospective Event Detection that was evaluated on a human-annotated set of historical news items. The present study may help to improve event detection on smaller text corpora.
机译:近年来,人们对数字人文科学的兴趣与日俱增。通过开发自然语言处理工具和出现不同知识领域(例如文学,艺术,哲学和历史)的文档的数字化文本集合,证明了这种兴趣。在本文中,我们将无监督主题建模应用于托洛茨基主义者于1929年至1941年在巴黎出版的《苏联反对派通讯》,以分析俄国反对派倾向媒体的主要趋势。我们使用基于潜在Dirichlet分配的模型确定了主题类别,并研究了动态主题模型作为将历史研究感兴趣的主要问题选出来的工具。应用主题建模和统计方法,我们提出了一种回顾性事件检测的方法,该方法在一组带有人类注释的历史新闻项目上进行了评估。本研究可能有助于改善对较小文本语料库的事件检测。

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