CONCLUSION:
In this paper it is demonstrated that the proposed BERT algorithm
performs better with highest accuracy in prediction of fake news. This
work has extraordinary potential and can be effective in holding ,
improving and identifying the fake news, hence it tends to be carried
out in social networking sites like twitter, facebook etc..
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