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Discovering topics in Twitter about the COVID-19 outbreak in Spain
2021
Revista de Procesamiento de Lenguaje Natural (SEPLN)
In this work, we apply topic modeling to study what users have been discussing in Twitter during the beginning of the COVID-19 pandemic. More particularly, we explore the period of time that includes three differentiated phases of the COVID-19 crisis in Spain: the pre-crisis time, the outbreak, and the beginning of the lockdown. To do so, we first collect a large corpus of Spanish tweets and clean them. Then, we cluster the tweets into topics using a Latent Dirichlet Allocation model, and
dblp:journals/pdln/Aguero-ToralesV21
fatcat:br4krtxr3venjc6e4j7eylixuy