Paper
18 June 2014 Classification of group behaviors in social media via social behavior grammars
Georgiy Levchuk, Lise Getoor, Marc Smith
Author Affiliations +
Abstract
The increasing use of online collaboration and information sharing in the last decade has resulted in explosion of criminal and anti-social activities in online communities. Detection of such behaviors are of interest to commercial enterprises who want to guard themselves from cyber criminals, and the military intelligence analysts who desire to detect and counteract cyberwars waged by adversarial states and organizations. The most challenging behaviors to detect are those involving multiple individuals who share actions and roles in the hostile activities and individually appear benign. To detect these behaviors, the theories of group behaviors and interactions must be developed. In this paper we describe our exploration of the data from collaborative social platform to categorize the behaviors of multiple individuals. We applied graph matching algorithms to explore consistent social interactions. Our research led us to a conclusion that complex collaborative behaviors can be modeled and detected using a concept of group behavior grammars, in a manner analogous to natural language processing. These grammars capture constraints on how people take on roles in virtual environments, form groups, and interact over time, providing the building blocks for scalable and accurate multi-entity interaction analysis and social behavior hypothesis testing.
© (2014) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Georgiy Levchuk, Lise Getoor, and Marc Smith "Classification of group behaviors in social media via social behavior grammars", Proc. SPIE 9097, Cyber Sensing 2014, 909707 (18 June 2014); https://doi.org/10.1117/12.2050823
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Cited by 1 scholarly publication.
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KEYWORDS
Web 2.0 technologies

Social networks

Analytical research

Virtual reality

Cyber sensing

Data modeling

Electromagnetic coupling

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