ANALYSIS AND PREDICTION OF DATASET CATEGORIES FOR DEEP LEARNING IN FAUX NEWS DETECTION: A SYSTEMATIC REVIEW

Main Article Content

Vaishnavi J. Deshmukh
Dr. Asha Ambhaikar

Abstract

As time flows, the quantity of information, in particular textual content information will increase exponentially. Along with the information, our know-how of Machine Learning additionally will increase and the computing electricity permits us to teach very complicated and big fashions faster. Fake information has been accumulating loads of interest international recently. The results may be political, economic, organizational, or maybe personal. This paper discusses the one-of-a-kind evaluation of datasets and classifiers technique that's powerful for implementation of Deep gaining knowledge of and system gaining knowledge of that allows you to remedy the problem. Secondary cause of this evaluation on this paper is a faux information detection version that uses n-gram evaluation and system gaining knowledge of strategies. We look at and evaluate one-of-a-kind functions extraction strategies and 3 one-of-a-kind system category datasets offer a mechanism for re-searchers to cope with excessive effect questions that might in any other case be prohibitively steeply-priced and time-ingesting to study.

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Author Biographies

Vaishnavi J. Deshmukh, Research Scholar Department of Computer Science & Engineering Kalinga University, Raipur, India.

Research Scholar
Department of Computer Science & Engineering
Kalinga University, Raipur, India.

 

Dr. Asha Ambhaikar

Faculty of Engineering

Department of Computer Science & Engineering

Kalinga University, Raipur, India.

 

References

H. Guo, J. Cao, Y. Zhang, J. Guo, and J. Li, “Rumor detection with hierarchical social attention network,†in Proceedings of the 27th ACM International Conference on Information and Knowledge Management, 2018, pp. 943–951.

M. Potthast, J. Kiesel, K. Reinartz, J. Bevendorff, and B.Stein, “A stylometric inquiry into hyperpartisan and fake news,†arXiv preprintarXiv:1702.05638, 2017.

K. Shu, S. Wang, and H. Liu, “Exploiting tri-relationship for fake news detection,†arXiv preprint arXiv:1712.07709, 2017.

C. Guo, J. Cao, X. Zhang, K. Shu, and M. Yu, “Exploiting emotions for fake news detection on social media,†arXiv preprint arXiv:1903.01728, 2019.

A´ . Figueira, N. Guimara˜es, and L. Torgo, “Current state of the art to detect fake news in social media: Global trendings and next challenges.†in WEBIST, 2018, pp. 332–339.

S. B. Parikh and P. K. Atrey, “Media-rich fake news detection: A survey,†in 2018 IEEE Conference on Multimedia Information Processing and Retrieval (MIPR). IEEE, 2018, pp. 436–441

K. Shu, A. Sliva, S. H. Wang, J. L. Tang, and H. Liu, Fake news detection on social media: A data mining perspective, ACM SIGKDD Explorati., vol. 19, no. 1, pp. 22–36, 2017.

E. Tacchini, G. Ballarin, M. L. D. Vedova, S. Moret, and L. de Alfaro, Some like it hoax: Automated fake news detection in social networks, Tech. Rep. UCSC-SOE-17-05, School of Engineering, University of California, Santa Cruz, CA, USA, 2017.

M. M. Waldrop, News feature: The genuine problem of fake news, Proc. Natl. Acad. Sci. USA, vol. 114, no. 48, pp.12631–12634, 2017.

Z. B. He, Z. P. Cai, and X. M.Wang, Modeling propagation dynamics and developing optimized countermeasures for rumor spreading in online social networks, in Proc. IEEE 35th Int. Conf. on Distributed Computing Systems, Columbus, OH, USA, 2015.

The Verge: Your short attention span could help fake news spread (2017). https://www.theverge.com/2017/6/26/15875488/fake-news-viral-hoaxes-botsinformationoverloadtwitter-facebook- social-media. Accessed 16 Aug 2017.

Priyanshi Shah, Ziad Kobti “Multimodal fake news detection using a Cultural Algorithm with situational and normative knowledge.†IEEE Explore Sept 16/2020.

N. H. Awad, M. Z. Ali, and R. M. Duwairi, “Cultural algorithm with improved local search for optimization problems,†in 2013 IEEE Congress on Evolutionary Computation. IEEE, 2013, pp. 284–291.

N. Ruchansky, S. Seo, and Y. Liu, CSI: A hybrid deep model for fake news detection, in Proc. 2017 ACM on Conf. on Informationand Knowledge Management, Singapore, 2017.

Fake News Detection Using Naive Bayes Classifier by MykhailoGranik, Volodymyr Mesyura. Available : http://ieeexplore.ieee.org/document/8100379/

Yeh-Cheng C, Shyhtsun FW (2018) FakeBuster: a robust fake account detection by activity analysis. In: IEEE 9th international symposium on parallel architectures, algorithms and programming. pp 108–110

Myo MS, Nyein NM (2018) Fake accounts detection on twitter using blacklist. In: IEEE 17th International conference on computer and information and information science. pp 562–566.

Qiang C, Michael S, Xiaowei Y, Tiago P (2012) Aiding the detection of fake accounts in large scale social online services. In: 9th USENIX conference on networked systems design and implementation. pp 1–14.

Mauro C, Radha P, Macro S (2012) Fakebook: detecting fake profiles in online social networks. In: IEEE international conference on advances in social networks analysis and mining. pp 1071–1078

Ahmed H, Traore I, Saad S (2017) Detection of online fake news using N-gram analysis and machine learning techniques. In: Conference paper (October 2017).