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Published February 13, 2022 | Version 101
Dataset Open

A large-scale COVID-19 Twitter chatter dataset for open scientific research - an international collaboration

  • 1. Georgia State University
  • 2. University of Missouri
  • 3. Universitat Autònoma de Barcelona
  • 4. Carl von Ossietzky Universität Oldenburg
  • 5. Universität Duisburg-Essen
  • 6. NRU HSE
  • 7. KFU

Description

Version 101 of the dataset. The peer-reviewed publication for this dataset has now been published  in Epidemiologia an MDPI journal, and can be accessed here: https://doi.org/10.3390/epidemiologia2030024. Please cite this when using the dataset.

Due to the relevance of the COVID-19 global pandemic, we are releasing our dataset of tweets acquired from the Twitter Stream related to COVID-19 chatter. Since our first release we have received additional data from our new collaborators, allowing this resource to grow to its current size. Dedicated data gathering started from March 11th yielding over 4 million tweets a day. We have added additional data provided by our new collaborators from January 27th to March 27th, to provide extra longitudinal coverage. Version 10 added ~1.5 million tweets in the Russian language collected between January 1st and May 8th, gracefully provided to us by: Katya Artemova (NRU HSE) and Elena Tutubalina (KFU). From version 12 we have included daily hashtags, mentions and emoijis and their frequencies the respective zip files. From version 14 we have included the tweet identifiers and their respective language for the clean version of the dataset. Since version 20 we have included language and place location for all tweets.

The data collected from the stream captures all languages, but the higher prevalence are:  English, Spanish, and French. We release all tweets and retweets on the full_dataset.tsv file (1,311,640,469 unique tweets), and a cleaned version with no retweets on the full_dataset-clean.tsv file (337,741,163 unique tweets). There are several practical reasons for us to leave the retweets, tracing important tweets and their dissemination is one of them. For NLP tasks we provide the top 1000 frequent terms in frequent_terms.csv, the top 1000 bigrams in frequent_bigrams.csv, and the top 1000 trigrams in frequent_trigrams.csv. Some general statistics per day are included for both datasets in the full_dataset-statistics.tsv and full_dataset-clean-statistics.tsv files. For more statistics and some visualizations visit: http://www.panacealab.org/covid19/ 

More details can be found (and will be updated faster at: https://github.com/thepanacealab/covid19_twitter) and our pre-print about the dataset (https://arxiv.org/abs/2004.03688

As always, the tweets distributed here are only tweet identifiers (with date and time added) due to the terms and conditions of Twitter to re-distribute Twitter data ONLY for research purposes. They need to be hydrated to be used.

Notes

This dataset will be updated bi-weekly at least with additional tweets, look at the github repo for these updates. Release: We have standardized the name of the resource to match our pre-print manuscript and to not have to update it every week.

Files

emojis.zip

Files (14.9 GB)

Name Size Download all
md5:f897d6fcb29741b2a593bb8175f78e78
11.6 MB Preview Download
md5:e1dd9dfa331211c5097434ca21d39c54
18.5 kB Preview Download
md5:fa67965a5d792873c29322947b839037
11.6 kB Preview Download
md5:ffd5cfd1e568f0a49047529572218db3
25.0 kB Preview Download
md5:cf3b91b649e62073f75125d6b4c1eaa7
14.4 kB Download
md5:269ef26d581a888d0f1affcf57b8e000
11.2 GB Download
md5:dd4ebdc5957bba7640055d459b5433c0
13.9 kB Download
md5:8ffa7cc1847b35d5eb818cf6439e8111
3.2 GB Download
md5:bb99ac57000f1f8a12fa401092310b5f
183.8 MB Preview Download
md5:e560d20dcb1a45a07874c81cdc647462
306.0 MB Preview Download

Additional details

Related works

Is continued by
Other: http://www.panacealab.org/covid19/ (URL)
Is supplement to
Preprint: https://arxiv.org/abs/2004.03688 (URL)