바로가기메뉴

본문 바로가기 주메뉴 바로가기

logo

Social Search in the Context of Social Navigation

Journal of the Korean Society for Information Management / Journal of the Korean Society for Information Management, (P)1013-0799; (E)2586-2073
2006, v.23 no.2, pp.147-165
https://doi.org/10.3743/KOSIM.2006.23.2.147



  • Downloaded
  • Viewed

Abstract

The explosive growth of Web-based educational resources requires a new approach for accessing relevant information effectively. Social searching in the context of social navigation is one of several answers to this problem, in the domain of information retrieval. It provides users with not merely a traditional ranked list, but also with visual hints which can guide users to information provided by their colleagues. A personalized and context-dependent social searching system has been implemented on a platform called KnowledgeSea II, an open-corpus Web-based educational support system with multiple access methods. Validity tests were run on a variety of aspects and results have shown that this is an effective way to help users access relevant, essential information.

keywords
social search, social navigation, personalization, adaptive systems, 사회적 검색, 사회적 네비게이션, 개인화, 적응 시스템

Reference

1.

Ahlberg. (b.1994). Tight coupling of dynamic query filters with starfield displays Human Factors in Computing Systems. ACM Press. , 313-317.

2.

Ahn. J. (2006). A Two-Level Adaptive Visualization for Information Access to Open-Corpus Educational Resources. , -.

3.

Brusilovsky, P. (2004). Social adaptive navigation support for open corpus electronic textbooks. , -.

4.

Brusilovsky, P. (2002). Using maps and landmarks for navigation between closed and open corpus hyperspace in Web-based education. 9, 59-82.

5.

Dieberger, A. (2000). Social Navigation: Techniques for Building More Usable Systems. 7(6), 36-45.

6.

Dron, J. (2001). Footpaths in the Stuff Swamp. In: Fowler. , 323-328.

7.

Freyne J. (2004). An Experiment in Social Search. , -.

8.

Heylighen F.. (1999). Collective Intelligence and its Implementation on the Web algorithm to develop a collective mental map. 5(3), 253-280.

9.

Kohonen, T.. (1997). Self-Organizing Maps.. , -.

10.

Lowrence, S. (1998). Context and Page Analysis for Improved Web Search. July-August, 38-46.

11.

Olsen. (r.r.1994). In Proceedings 1994 IEEE symposium on visual languages. , -.

12.

Olsen. (j.g.1993). Visualization of a document collection. , 69-81.

13.

Porter. (m.f.1980). An algorithm for suffix stripping. , 130-14 137.

14.

Roussinov, D.G. (1998). A Scalable Self-organizing Map Algorithm for Textual Classification: A Neural Network Approach to Thesaurus Generation. 15(1), 81-111.

15.

Salton. (ma.). G. 1989. Automatic Text Processing. Addison-Wesley Publishing Co.. , -.

16.

Smyth, B. (2004). Exploiting Query Repetition and Regularity in an Adaptive Community-Based Web Search Engine. 14(5), 383-423.

17.

Smyth, B. (2004). Exploiting Query Repetition and Regularity in an Adaptive Community-Based Web Search Engine. 14(5), 383-423.

Journal of the Korean Society for Information Management