ISSN 2394-5125
 


    EXTREME LEARNING MACHINE FOR SPAMMER DETECTION AND FAKE USER IDENTIFICATION FROM TWITTER (2023)


    N. Teja Sri, B. Poojitha, B. Ashwitha, B. Pravallika, B. Sai Siri
    JCR. 2023: 55-66

    Abstract

    Social networking sites engage millions of users around the world. The users' interactions with these social sites, such as Twitter and Facebook have a tremendous impact and occasionally undesirable repercussions for daily life. The prominent social networking sites have turned into a target platform for the spammers to disperse a huge amount of irrelevant and deleterious information. Twitter, for example, has become one of the most extravagantly used platforms of all times and therefore allows an unreasonable amount of spam. Fake users send undesired tweets to users to promote services or websites that not only affect legitimate users but also disrupt resource consumption. Moreover, the possibility of expanding invalid information to users through fake identities has increased that results in the unrolling of harmful content. Recently, the detection of spammers and identification of fake users on Twitter has become a common area of research in contemporary online social Networks (OSNs).

    Description

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    Volume & Issue

    Volume 10 Issue-4

    Keywords