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Studying How the Past is Remembered: Towards Computational History through Large Scale Text Mining

机译:研究如何回忆过去:通过大规模文本挖掘迈向计算历史

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History helps us understand the present and even to predict the future to certain extent. Given the huge amount of data about the past, we believe computer science will play an increasingly important role in historical studies, with computational history becoming an emerging interdisciplinary field of research. We attempt to study how the past is remembered through large scale text ruining. We achieve this by first collecting a large dataset of news articles about different countries and analyzing the data using computational and statistical tools. We show that analysis of references to the past in news articles allows us to gain a lot of insight into the collective memories and societal views of different countries. Our work demonstrates how various computational tools can assist us in studying history by revealing interesting topics and hidden correlations. Our ultimate objective is to enhance history writing and evaluation with the help of algorithmic support.
机译:历史可以帮助我们了解现在,甚至可以在一定程度上预测未来。鉴于过去的大量数据,我们相信计算机科学将在历史研究中发挥越来越重要的作用,而计算历史将成为新兴的跨学科研究领域。我们试图研究如何通过大规模文本破坏来记住过去。为此,我们首先收集有关不同国家的大型新闻报道数据集,然后使用计算和统计工具分析数据。我们表明,对新闻报道中对过去的提及进行分析可以使我们对不同国家的集体记忆和社会观点有很多了解。我们的工作展示了各种计算工具如何通过揭示有趣的主题和隐藏的相关性来帮助我们研究历史。我们的最终目标是借助算法支持来增强历史记录和评估。

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