Title
SocialOcean: Visual Analysis and Characterization of Social Media Bubbles
Abstract
Social media allows citizens, corporations, and authorities to create, post, and exchange information. The study of its dynamics will enable analysts to understand user activities and social group characteristics such as connectedness, geospatial distribution, and temporal behavior. In this context, social media bubbles can be defined as social groups that exhibit certain biases in social media. These biases strongly depend on the dimensions selected in the analysis, for example, topic affinity, credibility, sentiment, and geographic distribution. In this paper, we present SocialOcean, a visual analytics system that allows for the investigation of social media bubbles. There exists a large body of research in social sciences which identifies important dimensions of social media bubbles (SMBs). While such dimensions have been studied separately, and also some of them in combination, it is still an open question which dimensions play the most important role in defining SMBs. Since the concept of SMBs is fairly recent, there are many unknowns regarding their characterization. We investigate the thematic and spatiotemporal characteristics of SMBs and present a visual analytics system to address questions such as: What are the most important dimensions that characterize SMBs? and How SMBs embody in the presence of specific events that resonate with them? We illustrate our approach using three different real scenarios related to the single event of Boston Marathon Bombing, and political news about Global Warming. We perform an expert evaluation, analyze the experts' feedback, and present the lessons learned.
Year
DOI
Venue
2018
10.1109/BDVA.2018.8534023
2018 International Symposium on Big Data Visual and Immersive Analytics (BDVA)
Keywords
Field
DocType
social sciences,social media bubbles,SMBs,visual analytics system,social groups,socialocean,geospatial distribution,temporal behavior,geographic distribution,global warming,political news,expert evaluation
Geospatial analysis,Social group,Data science,Data visualization,Social connectedness,Social media,Credibility,Computer science,Visual analytics,Politics
Conference
ISBN
Citations 
PageRank 
978-1-5386-9195-3
0
0.34
References 
Authors
0
8
Name
Order
Citations
PageRank
Alexandra Diehl1465.68
Michael Hundt201.69
Johannes Häussler3142.70
Daniel Seebacher4549.09
Siming Chen512514.34
Nida Cilasun600.34
Daniel A. Keim777041141.60
Tobias Schreck81854123.28