Title
Learning to Rank Social Bots.
Abstract
Software robots, or simply bots, have often been regarded as harmless programs confined within the cyberspace. However, recent events in our society proved that they can have important effects on real life as well. Bots have in fact become one of the key tools for disseminating information through online social networks (OSNs), influencing their members and eventually changing their opinions. With a focus on classification, social bot detection has lately emerged as a major topic in OSN analysis; nevertheless more research is needed to enhance our understanding of such automated behaviors, particularly to unveil the characteristics that better differentiate legitimate accounts from bots. We argue that this demands for learning behavioral models that should be trained using a large and heterogeneous set of behavioral features, so to detect and characterize OSN accounts according to their status as bots. Within this view, in this work we push forward research on bot analysis by proposing a machine-learning framework for identifying and ranking OSN accounts based on their degree of bot relevance. Our framework exploits the most known existing methods on bot detection for enhanced feature extraction, and state-of-the-art learning-to-rank methods, using different optimization and evaluation criteria. Results obtained on Twitter data show the significance and effectiveness of our approach in detecting and ranking bot accounts.
Year
DOI
Venue
2018
10.1145/3209542.3209563
HT
Keywords
Field
DocType
social bot analysis, bot detection, Twitter data
Learning to rank,World Wide Web,Social network,Ranking,Computer science,Feature extraction,Exploit,Dissemination,Robot,Cyberspace
Conference
ISBN
Citations 
PageRank 
978-1-4503-5427-1
0
0.34
References 
Authors
36
2
Name
Order
Citations
PageRank
Diego Perna193.20
Andrea Tagarelli247552.29