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  1. Article ; Online: Design and analysis of a large-scale COVID-19 tweets dataset.

    Lamsal, Rabindra

    Applied intelligence (Dordrecht, Netherlands)

    2020  Volume 51, Issue 5, Page(s) 2790–2804

    Abstract: ... than 310 million COVID-19 specific English language tweets and their sentiment scores. The dataset's geo ... to any crisis. This paper presents COV19Tweets Dataset (Lamsal 2020a), a large-scale Twitter dataset with more ... design in detail, and the tweets in both the datasets are analyzed. The datasets are released publicly ...

    Abstract As of July 17, 2020, more than thirteen million people have been diagnosed with the Novel Coronavirus (COVID-19), and half a million people have already lost their lives due to this infectious disease. The World Health Organization declared the COVID-19 outbreak as a pandemic on March 11, 2020. Since then, social media platforms have experienced an exponential rise in the content related to the pandemic. In the past, Twitter data have been observed to be indispensable in the extraction of situational awareness information relating to any crisis. This paper presents COV19Tweets Dataset (Lamsal 2020a), a large-scale Twitter dataset with more than 310 million COVID-19 specific English language tweets and their sentiment scores. The dataset's geo version, the GeoCOV19Tweets Dataset (Lamsal 2020b), is also presented. The paper discusses the datasets' design in detail, and the tweets in both the datasets are analyzed. The datasets are released publicly, anticipating that they would contribute to a better understanding of spatial and temporal dimensions of the public discourse related to the ongoing pandemic. As per the stats, the datasets (Lamsal 2020a, 2020b) have been accessed over 74.5k times, collectively.
    Language English
    Publishing date 2020-11-06
    Publishing country Netherlands
    Document type Journal Article
    ZDB-ID 1479519-X
    ISSN 1573-7497 ; 0924-669X
    ISSN (online) 1573-7497
    ISSN 0924-669X
    DOI 10.1007/s10489-020-02029-z
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article ; Online: Design and analysis of a large-scale COVID-19 tweets dataset

    Lamsal, Rabindra

    Appl Intell

    Abstract: ... than 310 million COVID-19 specific English language tweets and their sentiment scores. The dataset’s geo ... to any crisis. This paper presents COV19Tweets Dataset (Lamsal 2020a), a large-scale Twitter dataset with more ... design in detail, and the tweets in both the datasets are analyzed. The datasets are released publicly ...

    Abstract As of July 17, 2020, more than thirteen million people have been diagnosed with the Novel Coronavirus (COVID-19), and half a million people have already lost their lives due to this infectious disease. The World Health Organization declared the COVID-19 outbreak as a pandemic on March 11, 2020. Since then, social media platforms have experienced an exponential rise in the content related to the pandemic. In the past, Twitter data have been observed to be indispensable in the extraction of situational awareness information relating to any crisis. This paper presents COV19Tweets Dataset (Lamsal 2020a), a large-scale Twitter dataset with more than 310 million COVID-19 specific English language tweets and their sentiment scores. The dataset’s geo version, the GeoCOV19Tweets Dataset (Lamsal 2020b), is also presented. The paper discusses the datasetsdesign in detail, and the tweets in both the datasets are analyzed. The datasets are released publicly, anticipating that they would contribute to a better understanding of spatial and temporal dimensions of the public discourse related to the ongoing pandemic. As per the stats, the datasets (Lamsal 2020a, 2020b) have been accessed over 74.5k times, collectively.
    Keywords covid19
    Publisher PMC
    Document type Article ; Online
    DOI 10.1007/s10489-020-02029-z
    Database COVID19

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