Large-scale, Language-agnostic Discourse Classification of Tweets During COVID-19
Abstract
Language-agnostic tweet representations enable efficient classification of large-scale public discourse about pandemics using computationally lightweight machine learning models.
Quantifying the characteristics of public attention is an essential prerequisite for appropriate crisis management during severe events such as pandemics. For this purpose, we propose language-agnostic tweet representations to perform large-scale Twitter discourse classification with machine learning. Our analysis on more than 26 million COVID-19 tweets shows that large-scale surveillance of public discourse is feasible with computationally lightweight classifiers by out-of-the-box utilization of these representations.
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