Infer The Relevance Of Key Factors Over Twitter Trending Topics

T sudharjini, Nadella. Sunil

Abstract


Twitter trends, an opportunity efficient set of top terms in Twitter, have the aptitude to touch the community agenda of the public and have involved much attention. Twitter trends can also be battered to misinform people. In this we effort to scrutinize whether Twitter trends are safe from the operation of malicious users. By the collected tweets, we first demeanor a data analysis and determine sign of Twitter trend management. Then, we homework at the topic level and conclude the key factors that can control whether a theme starts trending due to its admiration, coverage, transmission, potential coverage, or reputation. Lastly, we more explore the trending handling from the standpoint of cooperated and bogus accounts and deliberate countermeasures.


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