Public discourse and sentiment during the COVID-19 pandemic: using
Latent Dirichlet Allocation for topic modeling on Twitter
- URL: http://arxiv.org/abs/2005.08817v3
- Date: Wed, 8 Jul 2020 13:52:36 GMT
- Title: Public discourse and sentiment during the COVID-19 pandemic: using
Latent Dirichlet Allocation for topic modeling on Twitter
- Authors: Jia Xue, Junxiang Chen, Chen Chen, Chengda Zheng, Sijia Li, Tingshao
Zhu
- Abstract summary: The study aims to understand Twitter users' discourse and psychological reactions to COVID-19.
We use machine learning techniques to analyze about 1.9 million Tweets related to coronavirus collected from January 23 to March 7, 2020.
Results do not reveal treatments and symptoms related messages as prevalent topics on Twitter.
- Score: 10.857375706178622
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The study aims to understand Twitter users' discourse and psychological
reactions to COVID-19. We use machine learning techniques to analyze about 1.9
million Tweets (written in English) related to coronavirus collected from
January 23 to March 7, 2020. A total of salient 11 topics are identified and
then categorized into ten themes, including "updates about confirmed cases,"
"COVID-19 related death," "cases outside China (worldwide)," "COVID-19 outbreak
in South Korea," "early signs of the outbreak in New York," "Diamond Princess
cruise," "economic impact," "Preventive measures," "authorities," and "supply
chain." Results do not reveal treatments and symptoms related messages as
prevalent topics on Twitter. Sentiment analysis shows that fear for the unknown
nature of the coronavirus is dominant in all topics. Implications and
limitations of the study are also discussed.
Related papers
- "COVID-19 was a FIFA conspiracy #curropt": An Investigation into the
Viral Spread of COVID-19 Misinformation [60.268682953952506]
We estimate the extent to which misinformation has influenced the course of the COVID-19 pandemic using natural language processing models.
We provide a strategy to combat social media posts that are likely to cause widespread harm.
arXiv Detail & Related papers (2022-06-12T19:41:01Z) - Extracting Major Topics of COVID-19 Related Tweets [2.867517731896504]
We use the topic modeling method to extract global topics during the nationwide quarantine periods (March 23 to June 23, 2020) on Covid-19 tweets.
We additionally analyze temporal trends of the topics for the whole world and four countries.
arXiv Detail & Related papers (2021-10-05T08:40:51Z) - American Twitter Users Revealed Social Determinants-related Oral Health
Disparities amid the COVID-19 Pandemic [72.44305630014534]
We collected oral health-related tweets during the COVID-19 pandemic from 9,104 Twitter users across 26 states.
Women and younger adults (19-29) are more likely to talk about oral health problems.
People from counties at a higher risk of COVID-19 talk more about tooth decay/gum bleeding and chipped tooth/tooth break.
arXiv Detail & Related papers (2021-09-16T01:10:06Z) - Leveraging Natural Language Processing to Mine Issues on Twitter During
the COVID-19 Pandemic [0.3674863913115431]
The recent global outbreak of the coronavirus disease (COVID-19) has spread to all corners of the globe.
To understand the public concerns and responses to the pandemic, a system that can leverage machine learning techniques to filter out irrelevant tweets is needed.
In this study, we constructed a system to identify the relevant tweets related to the COVID-19 pandemic throughout January 1st, 2020 to April 30th, 2020.
arXiv Detail & Related papers (2020-10-31T22:26:26Z) - Understanding the Hoarding Behaviors during the COVID-19 Pandemic using
Large Scale Social Media Data [77.34726150561087]
We analyze the hoarding and anti-hoarding patterns of over 42,000 unique Twitter users in the United States from March 1 to April 30, 2020.
We find the percentage of females in both hoarding and anti-hoarding groups is higher than that of the general Twitter user population.
The LIWC anxiety mean for the hoarding-related tweets is significantly higher than the baseline Twitter anxiety mean.
arXiv Detail & Related papers (2020-10-15T16:02:25Z) - Understanding the temporal evolution of COVID-19 research through
machine learning and natural language processing [66.63200823918429]
The outbreak of the novel coronavirus disease 2019 (COVID-19), caused by the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has been continuously affecting human lives and communities around the world.
We used multiple data sources, i.e., PubMed and ArXiv, and built several machine learning models to characterize the landscape of current COVID-19 research.
Our findings confirm the types of research available in PubMed and ArXiv differ significantly, with the former exhibiting greater diversity in terms of COVID-19 related issues.
arXiv Detail & Related papers (2020-07-22T18:02:39Z) - Cross-lingual Transfer Learning for COVID-19 Outbreak Alignment [90.12602012910465]
We train on Italy's early COVID-19 outbreak through Twitter and transfer to several other countries.
Our experiments show strong results with up to 0.85 Spearman correlation in cross-country predictions.
arXiv Detail & Related papers (2020-06-05T02:04:25Z) - Twitter discussions and emotions about COVID-19 pandemic: a machine
learning approach [0.0]
We analyze 4 million Twitter messages related to the COVID-19 pandemic using a list of 25 hashtags such as "coronavirus," "COVID-19," "quarantine" from March 1 to April 21 in 2020.
We identify 13 discussion topics and categorize them into five different themes, such as "public health measures to slow the spread of COVID-19," "social stigma associated with COVID-19," "coronavirus news cases and deaths," "COVID-19 in the United States," and "coronavirus cases in the rest of the world"
arXiv Detail & Related papers (2020-05-26T16:10:02Z) - Critical Impact of Social Networks Infodemic on Defeating Coronavirus
COVID-19 Pandemic: Twitter-Based Study and Research Directions [1.6571886312953874]
An estimated 2.95 billion people in 2019 used social media worldwide.
The widespread of the Coronavirus COVID-19 resulted with a tsunami of social media.
This paper presents a large-scale study based on data mined from Twitter.
arXiv Detail & Related papers (2020-05-18T15:53:13Z) - The Ivory Tower Lost: How College Students Respond Differently than the
General Public to the COVID-19 Pandemic [66.80677233314002]
Pandemic of the novel Coronavirus Disease 2019 (COVID-19) has presented governments with ultimate challenges.
In the United States, the country with the highest confirmed COVID-19 infection cases, a nationwide social distancing protocol has been implemented by the President.
This paper aims to discover the social implications of this unprecedented disruption in our interactive society by mining people's opinions on social media.
arXiv Detail & Related papers (2020-04-21T13:02:38Z) - Mining Coronavirus (COVID-19) Posts in Social Media [3.04585143845864]
World Health Organization (WHO) characterized the novel coronavirus (COVID-19) as a global pandemic on March 11th, 2020.
In this article we report the preliminary results of our study on automatically detecting the positive reports of COVID-19 from social media user postings using state-of-the-art machine learning models.
arXiv Detail & Related papers (2020-03-28T23:38:50Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.