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Fake News Analyser using Natural Language Processing-A Study

Abhishek Tyagi, Ameer Faisal

Abstract


Because it is inexpensive, easily available, and portable, social media has become one of the most important sources of news for many people throughout the world in recent years. However, in today's context, one of the primary worries is the spread of bogus news on social media. People do this on purpose. Social media is being used to promote bogus news. Within minutes, word had reached every corner of the globe. Due to a lack of political context, machines are unable to recognise fraudulent news, which is referred to as "fake news." Common sense is lacking. The shortage of data in natural language processing algorithms continues to be a problem. This is common sense. Many attempts have been made to analyse bogus news.


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References


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