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Cross-language sentiment analysis of European Twitter messages during the COVID-19 pandemic

机译:Covid-19大流行期间欧洲推特信息的跨语言情绪分析

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Social media data can be a very salient source of information during crises. User-generated messages provide a window into people's minds during such times, allowing us insights about their moods and opinions. Due to the vast amounts of such messages, a large-scale analysis of population-wide developments becomes possible. In this paper, we analyze Twitter messages (tweets) collected during the first months of the COVID-19 pandemic in Europe with regard to their sentiment. This is implemented with a neural network for sentiment analysis using multilingual sentence embeddings. We separate the results by country of origin, and correlate their temporal development with events in those countries. This allows us to study the effect of the situation on people's moods. We see, for example, that lock-down announcements correlate with a deterioration of mood in almost all surveyed countries, which recovers within a short time span.
机译:社交媒体数据可以是危机期间的非常突出的信息来源。用户生成的消息在这种时间内为人们的思想提供了一个窗口,允许我们对他们的情绪和意见的见解。由于大量的这些消息,可能对人口广泛的发展进行了大规模分析。在本文中,我们分析了在欧洲在欧洲的Covid-19大流行病的第一个月内收集的Twitter消息(推文)关于他们的情绪。这是用神经网络实现,用于使用多语言句子嵌入来进行情绪分析。我们通过原籍国分开结果,并将其与这些国家的事件相关联。这使我们能够研究局势对人们情绪的影响。例如,我们看到锁定公告与几乎所有受访国家的情绪恶化相关,在短时间内跨越了差点。

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