Astroturfing Detection in Social Media: Using Binary n-Gram Analysis for Authorship Attribution

Astroturfing is appearing in numerous contexts in social media, with individuals posting product reviews or political commentary under a number of different names, and is of concern because of the intended deception. An astroturfer works with the aim of making it seem that a large number of people h...

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Bibliographic Details
Published in2016 IEEE Trustcom/BigDataSE/ISPA pp. 121 - 128
Main Authors Jian Peng, Kim-Kwang Choo, Raymond, Ashman, Helen
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.08.2016
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ISSN2324-9013
DOI10.1109/TrustCom.2016.0054

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Summary:Astroturfing is appearing in numerous contexts in social media, with individuals posting product reviews or political commentary under a number of different names, and is of concern because of the intended deception. An astroturfer works with the aim of making it seem that a large number of people hold the same opinion, promoting a consensus based on the astroturfer's intentions. It is generally done for commercial or political advantage, often by paid writers or ideologically-motivated writers. This paper brings the notion of authorship attribution to bear on the astroturfing problem, collecting quantities of data from public social media sites and analysing the putative individual authors to see if they appear to be the same person. The analysis comprises a binary n-gram method which was previously shown to be effective at accurately identifying authors on a training set from the same authors, while this paper shows how authors on different social media turn out to be the same author.
ISSN:2324-9013
DOI:10.1109/TrustCom.2016.0054