Author : Nitin Abrol 1
Date of Publication :15th December 2022
Abstract: Social media has millions of users around the world, engaging with each other and sharing information. The information shared in these platforms can be collected and analyzed. This paper is a review on the the collection and analysis of data from social media platforms and the advantages & disadvantages of data analysis in social media platforms
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