Browse > Article
http://dx.doi.org/10.17477/jcea.2015.14.2.087

Catalyzing social media scholarship with open tools and data  

Smith, Marc A. (Social Media Research Foundation)
Publication Information
Journal of Contemporary Eastern Asia / v.14, no.2, 2015 , pp. 87-96 More about this Journal
Abstract
Social media comprises a vast and consequential landscape that has been poorly mapped and understood. Hundreds of millions of people have eagerly moved many of the conversations and discussions that compose civil society into these services and platforms. There is a need to document and analyze these social spaces for many academic and commercial purposes. The Social Media Research Foundation has engaged a strategy to cultivate better research into the structure and dynamics of social media. The foundation is dedicated to the creation of open tools, open data, and open scholarship related to social media. It has implemented a free and open network collection, analysis, and visualization tool called NodeXL to facilitate social media network research. Using NodeXL a group of researchers has collectively authored a publicly available archive, called the NodeXL Graph Gallery, composed of network data sets and visualizations from users around the world. This site has enabled the aggregation of tens of thousands of network datasets and images. Use of the archive has led to scholarly research results that are based on the wide range and scope of social media data sets available.
Keywords
Citations & Related Records
연도 인용수 순위
  • Reference
1 Smith, M., Lee Rainie, Ben Shneiderman, Itai Himelboim. 2014. Mapping Twitter Topic Networks: From Polarized Crowds to Community Clusters, Pew Internet Research Center. http://www.pewinternet.org/2014/02/20/mapping-twitter-topic-networks-from-polarized-crowds-to-community-clusters/
2 Smith, M., Shneiderman, B., Milic-Frayling, N., Rodrigues, E.M., Barash, V., Dunne, C., Capone, T., Perer, A. & Gleave, E. (2009), "Analyzing (social media) networks with NodeXL", In C&T '09: Proc. fourth international conference on Communities and Technologies. New York, NY, USA., pp. 255-264. ACM.
3 Clauset, A., Newman, M. E. J., & Moore, C. (2004). Finding community structure in very large networks. Physical Review E, 70(6), 066111.   DOI
4 Harel, D., & Koren, Y. (2001). A fast multi-scale method for drawing large graphs. In 8th International Symposium on Graph Drawing, 1984 Lecture Notes in Computer Science, 183-196.
5 Eduarda Mendes Rodrigues, Natasa Milic-Frayling, Marc Smith, Ben Shneiderman, Derek Hansen, Group-in-a-box Layout for Multi-faceted Analysis of Communities. IEEE Third Interna-tional Conference on Social Computing, October 9-11, 2011. Boston, MA