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Volume - 3 | Issue - 4 | december 2021

Fake News Detection using Data Mining Techniques
S. Sunil Kumar Aithal  , Krishna Prasad Rao, R. P. Puneeth  302  327
Pages: 263-273
Cite this article
Aithal, S. S. K., Rao, K. P. & Puneeth, R. P. (2021). Fake News Detection using Data Mining Techniques. Journal of Trends in Computer Science and Smart Technology, 3(4), 263-273. doi:10.36548/jtcsst.2021.4.002
Published
31 December, 2021
Abstract

Nowadays, internet has been well known as an information source where the information might be real or fake. Fake news over the web exist since several years. The main challenge is to detect the truthfulness of the news. The motive behind writing and publishing the fake news is to mislead the people. It causes damage to an agency, entity or person. This paper aims to detect fake news using semantic search.

Keywords

Real news Fake news Twitter API Keys Semantic Search

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