The discovery of phenomena in social networks has prompted renewed interests in the field. Data in social networks however can be massive, requiring scalable Big Data architecture. Conversely, research in Big Data needs the volume and velocity of social media data for testing its scalability. Not only so, appropriate data processing and mining of acquired datasets involve complex issues in the variety, veracity, and variability of the data, after which visualisation must occur before we can see fruition in our efforts. This article presents topical, multimodal, and longitudinal social media datasets from the integration of various scalable open source technologies. The article details the process that led to the discovery of social information landscapes within the Twitter social network, highlighting the experience of dealing with social media datasets, using a funneling approach so that data becomes manageable. The article demonstrated the feasibility and value of using scalable open source technologies for acquiring massive, connected datasets for research in the social sciences.
[1]
Michael J. Gerhardt.
The End of Theory
,
2001
.
[2]
Adam Jacobs,et al.
The pathologies of big data
,
2009,
Commun. ACM.
[3]
D. Boyd,et al.
Six Provocations for Big Data
,
2011
.
[4]
L. Manovich,et al.
Trending: The Promises and the Challenges of Big Social Data
,
2012
.
[5]
Leroy White,et al.
The end of theory
,
1996
.
[6]
Jennifer Preece,et al.
Online Communities: Design, Theory, and Practice
,
2005,
J. Comput. Mediat. Commun..
[7]
D. Chavis,et al.
Sense of community: A definition and theory
,
1986
.
[8]
Niklas Elmqvist,et al.
Visual Analytics for Multimodal Social Network Analysis: A Design Study with Social Scientists
,
2013,
IEEE Transactions on Visualization and Computer Graphics.
[9]
Peter R. Monge,et al.
Network Theory | Multidimensional Networks and the Dynamics of Sociomateriality: Bringing Technology Inside the Network
,
2011
.