TY - JOUR
T1 - If it looks like a spammer and behaves like a spammer, it must be a spammer
T2 - analysis and detection of microblogging spam accounts
AU - Almaatouq, Abdullah
AU - Shmueli, Erez
AU - Nouh, Mariam
AU - Alabdulkareem, Ahmad
AU - Singh, Vivek K.
AU - Alsaleh, Mansour
AU - Alarifi, Abdulrahman
AU - Alfaris, Anas
AU - Pentland, Alex ‘Sandy’
N1 - Publisher Copyright:
© 2016, Springer-Verlag Berlin Heidelberg.
PY - 2016/10/1
Y1 - 2016/10/1
N2 - Spam in online social networks (OSNs) is a systemic problem that imposes a threat to these services in terms of undermining their value to advertisers and potential investors, as well as negatively affecting users’ engagement. As spammers continuously keep creating newer accounts and evasive techniques upon being caught, a deeper understanding of their spamming strategies is vital to the design of future social media defense mechanisms. In this work, we present a unique analysis of spam accounts in OSNs viewed through the lens of their behavioral characteristics. Our analysis includes over 100 million messages collected from Twitter over the course of 1 month. We show that there exist two behaviorally distinct categories of spammers and that they employ different spamming strategies. Then, we illustrate how users in these two categories demonstrate different individual properties as well as social interaction patterns. Finally, we analyze the detectability of spam accounts with respect to three categories of features, namely content attributes, social interactions, and profile properties.
AB - Spam in online social networks (OSNs) is a systemic problem that imposes a threat to these services in terms of undermining their value to advertisers and potential investors, as well as negatively affecting users’ engagement. As spammers continuously keep creating newer accounts and evasive techniques upon being caught, a deeper understanding of their spamming strategies is vital to the design of future social media defense mechanisms. In this work, we present a unique analysis of spam accounts in OSNs viewed through the lens of their behavioral characteristics. Our analysis includes over 100 million messages collected from Twitter over the course of 1 month. We show that there exist two behaviorally distinct categories of spammers and that they employ different spamming strategies. Then, we illustrate how users in these two categories demonstrate different individual properties as well as social interaction patterns. Finally, we analyze the detectability of spam accounts with respect to three categories of features, namely content attributes, social interactions, and profile properties.
KW - Account abuse
KW - Microblogging
KW - Online social networks
KW - Spam analysis
KW - Spam detection
UR - http://www.scopus.com/inward/record.url?scp=84958751448&partnerID=8YFLogxK
U2 - 10.1007/s10207-016-0321-5
DO - 10.1007/s10207-016-0321-5
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AN - SCOPUS:84958751448
SN - 1615-5262
VL - 15
SP - 475
EP - 491
JO - International Journal of Information Security
JF - International Journal of Information Security
IS - 5
ER -