SICLSep 1, 2020

Twitter Corpus of the #BlackLivesMatter Movement And Counter Protests: 2013 to 2021

arXiv:2009.00596v337 citations
AI Analysis

This provides a resource for researchers studying social movements and online discourse, but it is incremental as it applies existing methods to new data.

The paper tackles the problem of analyzing social media discourse around the Black Lives Matter movement and counter protests by introducing a dataset of 63.9 million tweets from 2013 to 2021, summarizing temporal trends and providing LDA topics for linguistic pattern identification.

Black Lives Matter (BLM) is a decentralized social movement protesting violence against Black individuals and communities, with a focus on police brutality. The movement gained significant attention following the killings of Ahmaud Arbery, Breonna Taylor, and George Floyd in 2020. The #BlackLivesMatter social media hashtag has come to represent the grassroots movement, with similar hashtags counter protesting the BLM movement, such as #AllLivesMatter, and #BlueLivesMatter. We introduce a data set of 63.9 million tweets from 13.0 million users from over 100 countries which contain one of the following keywords: BlackLivesMatter, AllLivesMatter, and BlueLivesMatter. This data set contains all currently available tweets from the beginning of the BLM movement in 2013 to 2021. We summarize the data set and show temporal trends in use of both the BlackLivesMatter keyword and keywords associated with counter movements. Additionally, for each keyword, we create and release a set of Latent Dirichlet Allocation (LDA) topics (i.e., automatically clustered groups of semantically co-occuring words) to aid researchers in identifying linguistic patterns across the three keywords.

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