Detection of False Statement from Social Media using Machine Learning Algorithms
DOI:
https://doi.org/10.32628/CSEIT228348Keywords:
Traditional News Media, Online Social Media, Machine LearningAbstract
The proliferation of misleading information in everyday access media outlets such as social media feeds, news blogs, and newspapers has made it challenging to identify trustworthy news sources, thus increasing the need for computational tools able to provide insights into the reliability of online content. People intentionally spread these counterfeit statements with the help of web-based social networking sites. The fundamental objective of false statements is to influence the popular belief on specific issues. The main goal of false statements is to affect public opinion on certain matters. The aim of this paper is to find and detect false statements made by individual public figures using machine learning algorithms. A system is proposed in this paper that identifies whether a given statement is false or not by making use of a provided training dataset and the algorithms used. The results are concluding that Logistic Regression provides 98% the highest percentage of accuracy among various machine learning algorithms.
References
- Shivam B. Parikh and Pradeep K. Atrey, “Media-Rich Fake News Detection: A Survey”,IEEE Conference on Multimedia Information Processing and Retrieval, 2018
- Mykhailo Granik and Volodymyr Mesyura, “Fake News Detection Using Naive Bayes Classifier”, IEEE First Ukraine Conference on Electrical and Computer Engineering (UKRCON), 2017
- Shlok Gilda, “Evaluating Machine Learning Algorithms for Fake News Detection”, IEEE 15th Student Conference on Research and Development (SCOReD),2017
- QIN Yumeng, Dominik Wurzer and TANG Cunchen, “Predicting Future Rumours”, Chinese Journal of Electronics, 2018.
- Veronica Perez-Rosas, Bennett Kleinberg, Alexandra Lefevre and Rada Mihalcea1,” Automatic Detection of Fake News”, 2018. 8. Supanya Aphiwongsophon and Prabhas Chongstitvatana,
- Fake News Detection on Social Media: A Data Mining Perspective; Shu, Kai and Sliva, Amy and Wang, Suhang and Tang, Jiliang and Liu, Huan; ACM SIGKDD Explorations Newsletter 2017
- Kyumin Lee, James Caverlee, and Steve Webb. Uncovering social spammers: social honeypots+ machine learning
- Charles X Ling, Jin Huang, and Harry Zhang. Auc: a statistically consistent and more discriminating measure than accuracy.
- Andreas Vlachos and Sebastian Riedel. Fact checking: Task definition and dataset construction. ACL’14.
- Thomas G Dietterich et al. Ensemble methods in machine learning. Multiple classifier systems, 1857:1–15, 2000.
- Johannes F¨urnkranz. A study using n-gram features for text categorization. Austrian Research Institute for Artifical Intelligence, 3(1998):1–10, 1998
Downloads
Published
Issue
Section
License
Copyright (c) IJSRCSEIT

This work is licensed under a Creative Commons Attribution 4.0 International License.