Fake news detection using title, URL and tweet and retweet
This project investigates the role of social media as a vector for the dissemination of fake news, focusing on the use of URLs, titles, and Tweet recounts to detect misinformation. My research involves developing a machine learning framework capable of identifying potential fake news in social me...
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2024
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sg-ntu-dr.10356-1752342024-04-26T15:41:55Z Fake news detection using title, URL and tweet and retweet Ang, Bryan Yi Heng Bo An School of Computer Science and Engineering boan@ntu.edu.sg Computer and Information Science Fake news This project investigates the role of social media as a vector for the dissemination of fake news, focusing on the use of URLs, titles, and Tweet recounts to detect misinformation. My research involves developing a machine learning framework capable of identifying potential fake news in social media posts. The main goal of this study is to establish an accurate model that can differentiate between credible and non-credible information based on the features of social media posts, such as the source URL, the structure and phrasing of titles, and the patterns in the spread of the content, as reflected in Tweet recounts. To undertake this task, I pre-processed a dataset of 23,197 social media posts from Kaggle, incorporating their URLs, titles, and dissemination metrics. I utilized a variety of text and data representation techniques to convert these attributes into a format amenable to machine learning analysis. The study harnessed numerous machine learning algorithms, which were refined through hyperparameter tuning, feature engineering, and the use of ensemble methods to boost the predictive accuracy of the model. Through meticulous evaluation and contrasting the performance of multiple models using a range of metrics, the research pinpointed the most effective model for fake news detection. The findings underscore the transformative potential of machine learning and data science in combating the spread of fake news, offering opportunities for early detection and mitigating the impact of misinformation. The ambition of this project is to pave the way for advanced research in the realm of fake news analysis, integrating more complex data sources, and evolving the model for pragmatic application in the dynamic landscape of social media. Bachelor's degree 2024-04-21T23:46:01Z 2024-04-21T23:46:01Z 2024 Final Year Project (FYP) Ang, B. Y. H. (2024). Fake news detection using title, URL and tweet and retweet. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/175234 https://hdl.handle.net/10356/175234 en application/pdf Nanyang Technological University |
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Computer and Information Science Fake news Ang, Bryan Yi Heng Fake news detection using title, URL and tweet and retweet |
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This project investigates the role of social media as a vector for the dissemination of fake news,
focusing on the use of URLs, titles, and Tweet recounts to detect misinformation. My research
involves developing a machine learning framework capable of identifying potential fake news in
social media posts.
The main goal of this study is to establish an accurate model that can differentiate between
credible and non-credible information based on the features of social media posts, such as the
source URL, the structure and phrasing of titles, and the patterns in the spread of the content, as
reflected in Tweet recounts.
To undertake this task, I pre-processed a dataset of 23,197 social media posts from Kaggle,
incorporating their URLs, titles, and dissemination metrics. I utilized a variety of text and data
representation techniques to convert these attributes into a format amenable to machine
learning analysis. The study harnessed numerous machine learning algorithms, which were
refined through hyperparameter tuning, feature engineering, and the use of ensemble methods
to boost the predictive accuracy of the model.
Through meticulous evaluation and contrasting the performance of multiple models using a range
of metrics, the research pinpointed the most effective model for fake news detection. The findings
underscore the transformative potential of machine learning and data science in combating the
spread of fake news, offering opportunities for early detection and mitigating the impact of
misinformation.
The ambition of this project is to pave the way for advanced research in the realm of fake news
analysis, integrating more complex data sources, and evolving the model for pragmatic
application in the dynamic landscape of social media. |
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Bo An |
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Bo An Ang, Bryan Yi Heng |
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Final Year Project |
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Ang, Bryan Yi Heng |
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Ang, Bryan Yi Heng |
title |
Fake news detection using title, URL and tweet and retweet |
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Fake news detection using title, URL and tweet and retweet |
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Fake news detection using title, URL and tweet and retweet |
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Fake news detection using title, URL and tweet and retweet |
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Fake news detection using title, URL and tweet and retweet |
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fake news detection using title, url and tweet and retweet |
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Nanyang Technological University |
publishDate |
2024 |
url |
https://hdl.handle.net/10356/175234 |
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