Sentiment Analysis and Text Analysis of the Public Discourse on Twitter
about COVID-19 and MPox
- URL: http://arxiv.org/abs/2312.10580v1
- Date: Sun, 17 Dec 2023 01:50:27 GMT
- Title: Sentiment Analysis and Text Analysis of the Public Discourse on Twitter
about COVID-19 and MPox
- Authors: Nirmalya Thakur
- Abstract summary: The recent outbreaks of COVID-19 and MPox have served as catalysts for Twitter usage related to seeking and sharing information, views, opinions, and sentiments involving both of these viruses.
None of the prior works in this field analyzed tweets focusing on both COVID-19 and MPox simultaneously.
To address this research gap, a total of 61,862 tweets that focused on MPox and COVID-19 simultaneously, posted between 7 May 2022 and 3 March 2023, were studied.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Mining and analysis of the big data of Twitter conversations have been of
significant interest to the scientific community in the fields of healthcare,
epidemiology, big data, data science, computer science, and their related
areas, as can be seen from several works in the last few years that focused on
sentiment analysis and other forms of text analysis of tweets related to Ebola,
E-Coli, Dengue, Human Papillomavirus, Middle East Respiratory Syndrome,
Measles, Zika virus, H1N1, influenza like illness, swine flu, flu, Cholera,
Listeriosis, cancer, Liver Disease, Inflammatory Bowel Disease, kidney disease,
lupus, Parkinsons, Diphtheria, and West Nile virus. The recent outbreaks of
COVID-19 and MPox have served as catalysts for Twitter usage related to seeking
and sharing information, views, opinions, and sentiments involving both of
these viruses. None of the prior works in this field analyzed tweets focusing
on both COVID-19 and MPox simultaneously. To address this research gap, a total
of 61,862 tweets that focused on MPox and COVID-19 simultaneously, posted
between 7 May 2022 and 3 March 2023, were studied. The findings and
contributions of this study are manifold. First, the results of sentiment
analysis using the VADER approach show that nearly half the tweets had a
negative sentiment. It was followed by tweets that had a positive sentiment and
tweets that had a neutral sentiment, respectively. Second, this paper presents
the top 50 hashtags used in these tweets. Third, it presents the top 100 most
frequently used words in these tweets after performing tokenization, removal of
stopwords, and word frequency analysis. Finally, a comprehensive comparative
study that compares the contributions of this paper with 49 prior works in this
field is presented to further uphold the relevance and novelty of this work.
Related papers
- Analyzing Public Reactions, Perceptions, and Attitudes during the MPox
Outbreak: Findings from Topic Modeling of Tweets [4.506099292980221]
The recent outbreak of the MPox virus has resulted in a tremendous increase in the usage of Twitter.
This paper aims to address this research gap and makes two scientific contributions to this field.
arXiv Detail & Related papers (2023-12-19T06:39:38Z) - "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) - What goes on inside rumour and non-rumour tweets and their reactions: A
Psycholinguistic Analyses [58.75684238003408]
psycho-linguistics analyses of social media text are vital for drawing meaningful conclusions to mitigate misinformation.
This research contributes by performing an in-depth psycholinguistic analysis of rumours related to various kinds of events.
arXiv Detail & Related papers (2021-11-09T07:45:11Z) - 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) - Sentiment Analysis of Covid-19 Tweets using Evolutionary
Classification-Based LSTM Model [0.6445605125467573]
This paper represents the sentiment analysis on collected large number of tweets on Coronavirus or Covid-19.
We analyze the trend of public sentiment on the topics related to Covid-19 epidemic using an evolutionary classification followed by the n-gram analysis.
We trained the long-short term network using two types of rated tweets to predict sentiment on Covid-19 data and obtained an overall accuracy of 84.46%.
arXiv Detail & Related papers (2021-06-13T04:27:21Z) - 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) - 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) - Racism is a Virus: Anti-Asian Hate and Counterspeech in Social Media
during the COVID-19 Crisis [51.39895377836919]
COVID-19 has sparked racism and hate on social media targeted towards Asian communities.
We study the evolution and spread of anti-Asian hate speech through the lens of Twitter.
We create COVID-HATE, the largest dataset of anti-Asian hate and counterspeech spanning 14 months.
arXiv Detail & Related papers (2020-05-25T21:58:09Z) - 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) - Word frequency and sentiment analysis of twitter messages during
Coronavirus pandemic [0.0]
The social networking site, Twitter, demonstrated similar effect with the number of posts related to coronavirus showing an unprecedented growth in a very short span of time.
This paper presents a statistical analysis of the twitter messages related to this disease posted since January 2020.
Results showed that the majority of the tweets had a positive polarity and only about 15% were negative.
arXiv Detail & Related papers (2020-04-08T10:45:08Z)
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.