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The Covid-19 Crisis: An NLP Exploration of the French Twitter Feed (February-May 2020)

机译:Covid-19危机:法国Twitter Feed的NLP探索(2月 - 5月2020年)

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The Covid-19 pandemic offers a spectacular case of disaster management. In this literature, the paradigm of participation is fundamental: the mitigation of the impact of the disaster, the quality of the preparation and the resilience of the society, which facilitate the reconstruction, depend on the participation of the populations. Being able to observe and measure the state of mental health of the population (anxiety, confidence, expectations, ...) and to identify the points of controversy and the content of the discourse, are necessary to support measures designed to encourage this participation. Social media, and in particular Twitter, offer valuable resources for researching this discourse. The objective of this empirical study is to reconstruct a micro history of users' reactions to the pandemic as they share them on social networks. The general method used comes from new processing techniques derived from Natural Language Processing (NLP). Three analysis methods are used to process the corpus: analysis of the temporal evolution of term occurrences; creation of dynamic semantic maps to identify cooccurrences; analysis of topics using the SVM method. The main empirical result is that the mask emerges as a central figure of discourse, at least in the discourse produced by certain social media. The retrospective analysis of the phenomenon allows us to explain what made the mask a focal point not only in conversation, but also in behaviors. Its value resides less in its functional qualities than in its ability to fix attention and organize living conditions under the threat of pandemic.
机译:该Covid-19大流行提供了灾难管理的壮观情形。在此文献中,参与的范式是根本:对灾害的影响减缓,该制剂的质量和社会,这有利于重建的弹性,取决于人口的参与。能够观察和测量人口的精神健康(焦虑,信心,预期,...)的状态,并确定争议和话语的内容分,有必要支持旨在鼓励这种参与的措施。社会化媒体,特别是Twitter的,为研究这种话语提供了宝贵的资源。本实证研究的目的是重建用户反应的微观史的流感大流行,因为他们在社交网络上分享。使用的一般方法是来自从自然语言处理(NLP)衍生的新的处理技术。三种分析方法来处理文集:项出现的时间演变的分析;创建动态语义地图来确定共现的;使用SVM方法专题分析。主要经验结果是,掩模通过某些社交媒体产生的话语涌现作为话语的一个中心人物,至少。这种现象的回顾性分析使我们解释是什么让面膜的焦点不仅在谈话中,而且在行为。它的价值在于它的功能质量小于它能够修复的重视和下大流行威胁的组织生活条件。

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