Social visualization
Social visualization is an interdisciplinary intersection of information visualization to study creating intuitive depictions of massive and complex social interactions for social purposes. By visualizing those interactions made not only in the cyberspace including social media but also the physical world, captured through sensors, it can reveal overall patterns of social memes or it highlights one individual's implicit behaviors in diverse social spaces. In particular, it is the study “primarily concerned with the visualization of text, audio, and visual interaction data to uncover social connections and interaction patterns in online and physical spaces. ACM Computing Classification System has classified this field of study under the category of Human-Centered Computing and Information Visualization as a third level concept in a general sense.
Overview
Social visualization is a subset of information visualization. According to Karrie G. Karahalios and Fernanda Viégas, one of the most distinctive aspect of social visualization is that "social visualization focuses on people, the groups they form, their patterns, their interactions, and how they related to their communities." rather than other digital information. In this perspective, there are many challenges and questions drives this field of study to the interdisciplinary research context, ranging from the analytical to the critical to the creative perspectives.One of the common misperception of social visualization is that the relationship between Network Analysis or Social Network Visualization and Social Visualization; they are loosely related. Social network visualization is a traditional form of social visualization. It is more appropriate to consider in the context of visualization in social sciences. i.e. John Snow's maps of the 1854 cholera outbreak in Soho and Charles Booth's maps of poverty in London 1889
Due to the interdisciplinary nature, research methodology in this field is truly diversified from researchers to researchers; they adopt related technology used in computer science from data mining, machine learning, natural language processing to statistical models widely recognized in social science/communication, so that they could capture, process, analyze and represent its essence.