ML helps identify Covid-related conspiracy theories on social media


New York, Apr 20 (IANS): A team of researchers has identified that a new Machine Learning (ML) programme accurately identifies Covid-19-related conspiracy theories on social media and models how they evolved.

The study showed that misinformation tweets contain more negative sentiment when compared to factual tweets and that conspiracy theory evolve, incorporating details from unrelated conspiracy theories as well as real-world events.

"A lot of ML studies related to misinformation on social media focus on identifying different kinds of conspiracy theories," said researcher Courtney Shelley from Los Alamos National Laboratory in the US.

For the study, published in the journal JMIR Public Health and Surveillance, the team used publicly available, anonymized Twitter data to characterize four Covid-19 conspiracy theory themes and provide context for each through the first five months of the pandemic.

The four themes the study examined were that 5G cell towers spread the virus; that the Bill and Melinda Gates Foundation engineered or has otherwise malicious intent related to Covid-19; that the virus was bioengineered or was developed in a laboratory; and that the Covid-19 vaccines, which were then all still in development, would be dangerous.

"We began with a dataset of approximately 1.8 million tweets that contained Covid-19 keywords or were from health-related Twitter accounts," the researchers said.

"From this body of data, we identified subsets that matched the four conspiracy theories using pattern filtering, and hand-labelled several hundred tweets in each conspiracy theory category to construct training sets," they added.

Using the data collected for each of the four theories, the team built random forest ML, or Artificial Intelligence (AI), models that categorized tweets as Covid-19 misinformation or not.

Furthermore, the study found that a supervised learning technique could be used to automatically identify conspiracy theories and that an unsupervised learning approach (dynamic topic modelling) could be used to explore changes in word importance among topics within each theory.

 

  

Top Stories


Leave a Comment

Title: ML helps identify Covid-related conspiracy theories on social media



You have 2000 characters left.

Disclaimer:

Please write your correct name and email address. Kindly do not post any personal, abusive, defamatory, infringing, obscene, indecent, discriminatory or unlawful or similar comments. Daijiworld.com will not be responsible for any defamatory message posted under this article.

Please note that sending false messages to insult, defame, intimidate, mislead or deceive people or to intentionally cause public disorder is punishable under law. It is obligatory on Daijiworld to provide the IP address and other details of senders of such comments, to the authority concerned upon request.

Hence, sending offensive comments using daijiworld will be purely at your own risk, and in no way will Daijiworld.com be held responsible.