Counterfeit News Detection Using Machine Learning

SHANI P.R1

1

Publication Date: 2024/08/24

Abstract: World is advancing rapidly. Doubtlessly we have different advantages of this Digital world anyway it has its impediments moreover. There are different issues in this cutting-edge world. One of them is fake data. Someone can easily spread fake news. Fake news is spread to hurt the remaining of an individual or an affiliation. Fake news is counterfeit information that is formed and conveyed by dishonest person. Clients are uninformed that the information that they got is deluding information. Using Machine learning that can orchestrate whether the news is substantial or deceiving through setting up the model. There are different web based stages where the individual can spread the fake news. This consolidates Twitter, face book, Instagram, Whatsapp, etc. ML is the piece of man-made awareness that helpers in making the structures that can learn and perform different exercises. Simulated learning computations will recognize the fake news thus at whatever point they have arranged. A collection of machine learning computations are available that consolidate the controlled computer based intelligence estimations like Decision Tree, Random forest , Stochastic gradient Descent, K Nearest Neighbor. As a rule simulated intelligence estimations are used for assumption reason or to perceive something hidden away.

Keywords: Machine Learning, Sentimental Analysis, Social Media, Decision Tree, Random Forest , Stochastic Gradient Descent, K Nearest Neighbor, Cross Validation.

DOI: https://doi.org/10.38124/ijisrt/IJISRT24AUG302

PDF: https://ijirst.demo4.arinfotech.co/assets/upload/files/IJISRT24AUG302.pdf

REFERENCES

  1. Kecman, Support Vector Machines-An Introduction in “Support Vector Machines: Theory and Applications”, Springer, New York City, NY, USA, 2005.
  2. Kaggle, Fake News Detection, Kaggle, San Francisco, CA, USA, 2018, https://www.kaggle.com/jruvika/fake-news-detection.
  3. Ahmed, I. Traore, and S. Saad, “Detection of online fake news using n-gram analysis and machine learning techniques,” in Proceedings of the International Conference on Intelligent, Secure, and Dependable Systems in Distributed and Cloud Environments, pp. 127–138, Springer, Vancouver, Canada, 2017.
  4. Evaluating Machine Learning algorithms for fake news detection. -Shloka Gilda
  5. "Fake News Detection on Social Media: A Data Mining Perspective"Authors: Anil Kumar, S. Balaji, et al.
  6. "Detecting Fake News with Deep Neural Networks"Authors: Y. Zhang, M. A. Elaziz, et al.
  7. "Fake News Detection Using Machine Learning Algorithms"Authors: Santhosh Kumar, V. K. Dhiraj, et al.
  8. "A Survey on Fake News Detection with Deep Learning"Authors: Aman Deep, Abhinav Moudgil, et al.
  9. "Combating Fake News with Machine Learning: A Survey"Authors: M. Gupta, A. Singh, et al.
  10. "Fake News Detection: A Novel Approach Using Bert-Based Pretrained Language Models"Authors: A. G. Tiwari, P. Kumar, et al
  11. "Towards Robust Fake News Detection: A Multimodal Approach"Authors: C. Zhang, S. Yao, et al.
  12. H. Jabeen, ”Stemming and Lemmatization in Python”, DataCamp Community, 2020. [Online]. Available:https://www.datacamp.com/community/tutorials/stemminglemmatization-python. [Accessed: 14- Jul- 2020].