The worldwide spread of COVID-19 has provoked wide online discussions, creating an ?infodemic? on social media platforms such as Twitter and Facebook. However, since most of the content on social media is not authored by medical professionals an extensive amount of health-related information b
Detecting COVID-19 Misinformation on Social Media
The worldwide spread of COVID-19 has provoked wide online discussions, creating an ‘infodemic’ on social media platforms such as Twitter and Facebook. However, since most of the content on social media is not authored by medical professionals an extensive amount of health-related information being posted there has very low credibility and largely inaccurate and misleading. Such health-related misinformation, thereby not only leads potentially ill people away from proper treatment and care and disrupting the lives of common people but also being used as a tool to disrupt the economy of countries, reduce people’s trust in their governments, and to promote different products for profitability.
To address this misinformation spread problem, we propose an approach to detect misleading information about COVID19 from social media, such as tweets using NLP models.
Specifically, we intend to develop a web-based tool that employs machine learning and Natural Language Processing to detect whether a given Tweet text has a misconception, and if so, whether the discussion propagates or agrees with the misconception or disproves the misconception.
High-level idea of the approach: We intend to employ a two-step approach for the misconception detection problem stated above:
We intend to develop a web-based tool to detect COIVID-19 related misinformation in social media posts. The broader objective is to prevent health misinformation diffusion in social media by flagging posts that spread misinformation.
Technology Domain: Machine Learning
Programming Language: Python
Tools: Google Collaborator, Sublime Text 3, MySql
| Item Name | Type | No. of Units | Per Unit Cost (in Rs) | Total (in Rs) |
|---|---|---|---|---|
| 16GB RAM | Equipment | 1 | 8000 | 8000 |
| 2TB Hard Disk(External for Tweets Collection | Equipment | 1 | 12000 | 12000 |
| Google Colab license (USD 9.99 x 4 months) | Equipment | 3 | 6417 | 19250 |
| Total in (Rs) | 39250 |
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