Social information processing
Appearance
According to the introductory set of slides[1] for the AAAI Social Information Processing symposium, Social Information Processing is "an activity through which collective human actions organize knowledge." It is the creation and processing of information through the use of tools of the following sorts.
- Authoring tools: e.g., blogs
- Collaboration tools: e.g., wikis, in particular, e.g., Wikipedia
- Tagging systems: e.g., del.icio.us, Flickr, CiteULike
- Social networking: e.g., Facebook, MySpace, Essembly
- Collaborative filtering: e.g., Digg, the Amazon Mechanical Turk, Yahoo answers
As an academic field Social Information Processing studies the information processing power of highly networked social systems.
History (of Social Information Processing as an academic field)
History (of Social Information Processing as an information processing mechanism)
Current State of Knowledge
The website for the AAAI 2008 Spring symposium on Social Information Processing suggested the following topics and questions.
- Tagging: Tagging has already attracted the interest of the AI community. While the initial purpose of tagging was to help users organize and manage their own documents, it has since been proposed that collective tagging of common documents can be used to organize information via an informal classification system dubbed a ``folksonomy. There is hope that folksonomies will eventually help fulfill the promise of the Semantic Web.
- Human computing and collective intelligence: What type of problems are amenable to human swarm computing approaches? How can we design the "wisdom of crowds" effect to benefit our problem solving needs?
- Incentives to participation: How to elicit quality metadata and content from users? How can users resistant to tagging be encouraged to tag content?
- Social networks: While users create social networks for a variety of reasons --- e.g., to track lives of friends or work or opinions of the users they respect --- network information is important for many applications. Globally, an information ecosystem may arise through the interactions among users, and between users and content. A community of users interested in a specific topic may emerge over time, with linkages to other communities giving insight into relationships between topics.
- Evolution of social media and information ecosystems: How does content, and its quality, change in time? There is increasing interest in peer-production systems, for example in how and why some open-source projects like Linux and Wikipedia are successful. Under what circumstances are user-generated content sites likely to succeed and what implications does this have for information-sharing and learning within communities?
- Algorithms: Before we can harness the power of the social information processing, we need new approaches to structured data analysis, specifically algorithms for synthesizing various types of metdata: e.g., social networks and tagging. Research in this area will provide a principled foundation for the development of new algorithms for social search, information discovery and personalization and other approaches that exploit the power of the social information processing.
See Also
- The articles in the Social Information Processing Category.
References
- ^ AAAI, "Social Information Processing," AAAI Spring Symposium, Stanford University, March 2008