IJFANS International Journal of Food and Nutritional Sciences

ISSN PRINT 2319 1775 Online 2320-7876

MACHINE LEARNING CLASSIFICATION BASED FAKE NEWS DETECTION

Main Article Content

1Dr. M. RAGHAVA NAIDU, 2S. RAJEEV, 3Dr. M. RATNABABU, 4Dr. GODA SRINIVASA RAO

Abstract

: In our modern era where the internet is ubiquitous, everyone relies on various online resources for news. Along with the increase in the use of social media platforms like Facebook, Twitter, etc. news spread rapidly among millions of users within a very short span of time. The spread of fake news has far-reaching consequences like the creation of biased opinions to swaying election outcomes for the benefit of certain candidates. Moreover, spammers use appealing news headlines to generate revenue using advertisements via click-baits. The rapid adoption of social media platforms (such as Facebook and Twitter) paved the way for information dissemination that has never been witnessed in the human history before. With the current usage of social media platforms, consumers are creating and sharing more information than ever before, some of which are misleading with no relevance to reality. In this analysis, they described a system for Fake news detection that uses machine learning techniques. They also described a dataset of fake and true news to train the described system. Obtained results show the efficiency of the system.

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