A Comparative Study on Various Machine Learning Algorithms for the Prediction of Fake News Detections Using Bring Feed New Data Sets

Authors

  • G. Senthilkumar  Department of Computer Science, Dr. Kalaignar Government Arts College (Affiliated to Bharathidasan University, Tiruchirappalli) Kulithalai, TamilNadu, India
  • D. Ashok Kumar  Department of Computer Science, Dr. Kalaignar Government Arts College (Affiliated to Bharathidasan University, Tiruchirappalli) Kulithalai, TamilNadu, India

DOI:

https://doi.org/10.32628/CSEIT228691

Keywords:

Fake News Detection, Natural Language Processing, Passive Aggressive Classifier, Text Mining

Abstract

To read the news, most smartphone users prefer social media over the internet. The news is posted on news websites, and the source of the verification is cited. The problem is determining how to verify the news and publications shared on social media platforms such as Twitter, Facebook Pages, WhatsApp Groups, and other microblogs and social media platforms. It is damaging to society to hold on to rumors masquerading as news. The request for an end to speculations, particularly in developing countries such as India, with a focus on authenticated, accurate news reports. This essay demonstrates a model and process for detecting false news. The internet is a significant invention, as well as a substantial number of individuals use it. These people use it for a variety of purposes. These users have access to a variety of social media platforms. Through these online platforms, any user can make a post or spread news. FAKE NEWS has spread to a larger audience than ever before in this digital era, owing primarily to the rise of social media and direct messaging platforms. Fake news detection requires significant research, but it also presents some challenges. Some difficulties may arise as a result of a limited number of resources, such as a dataset. In this project, we propose a machine learning technique for detecting fake news and implementing a novel automatic fake news credibility inference model with Natural language processing steps that include text mining. Machine learning algorithms construct a deep diffusive network model based on a set of explicit and latent features extracted from textual information to simultaneously learn the representations of news articles, creators, and subjects. The "Fake News Challenge" is a Kaggle competition, and the social network is using AI to sift fake news articles out of users' feeds. In the comparison study, three algorithms—Random Forest, Navy Bayes, and Passive Aggressive classifier—are used to determine the text accuracy value for the precision, recall, and f1 score using these methods. Finally, Passive Aggressive Classifier approach provides greater accuracy compared to others. Combating fake news is a traditional text categorization project with a simple proposition.

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Published

2023-01-30

Issue

Section

Research Articles

How to Cite

[1]
G. Senthilkumar, D. Ashok Kumar, " A Comparative Study on Various Machine Learning Algorithms for the Prediction of Fake News Detections Using Bring Feed New Data Sets" International Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 9, Issue 1, pp.131-142, January-February-2023. Available at doi : https://doi.org/10.32628/CSEIT228691