Browse > Article

A Web Contents Ranking Algorithm using Bookmarks and Tag Information on Social Bookmarking System  

Park, Su-Jin (경원대학교 전자계산학과)
Lee, Si-Hwa (경원대학교 전자계산학과)
Hwang, Dae-Hoon (경원대학교)
Publication Information
Abstract
In current Web 2.0 environment, one of the most core technology is social bookmarking which users put tags and bookmarks to their interesting Web pages. The main purpose of social bookmarking is an effective information service by use of retrieval, grouping and share based on user's bookmark information and tagging result of their interesting Web pages. But, current social bookmarking system uses the number of bookmarks and tag information separately in information retrieval, where the number of bookmarks stand for user's degree of interest on Web contents, information retrieval, and classification serve the purpose of tag information. Because of above reason, social bookmarking system does not utilize effectively the bookmark information and tagging result. This paper proposes a Web contents ranking algorithm combining bookmarks and tag information, based on preceding research on associative tag extraction by tag clustering. Moreover, we conduct a performance evaluation comparing with existing retrieval methodology for efficiency analysis of our proposed algorithm. As the result, social bookmarking system utilizing bookmark with tag, key point of our research, deduces a effective retrieval results compare with existing systems.
Keywords
Web 2.0; Tag; Clustering; Social Bookmarking; Web Contents; Ranking; Retrieval;
Citations & Related Records
연도 인용수 순위
  • Reference
1 S. Brin and L. Page, "The Anatomy of a Largescale Hypertextual Web Search Engine," In Proceedings of 7th International World Wide Web Conference, Computer Networks and ISDN Systems, Vol.20, No.1-7, pp.107-117, Apr.,1998.
2 J M. Kleinberg, "Authoritative sources in hyperlinked environment," Journal of the ACM, Vol.46, No.5, pp.604-632, Sep, 1999.   DOI   ScienceOn
3 E. Adar, L.Zhang, L.Adamic, and R. Lucose, "Implicit Structure and the Dynamics of Blogspace," Workshop on the Weblogging Ecosystem : Aggregation, Analysis and Dynamics, 2004.
4 A. Turpin and F. Scholer, "User performance versus precision measures for simple search tasks," in Proceedings of the 29th Annual international ACM SIGIR Conference on Research and Development in information Retrieval (Seattle, Washington, USA, August 06-11, 2006). SIGIR '06. ACM, New York, NY, 11-18.
5 W. Bruce Croft, Donald Metzler, and Trevor Strohman, Search Engines: Information Retrieval in Practice, 2009.
6 Kalervo Jarvelin and Jaana Kekalainen, "Cumulated gain-based evaluation of IR techniques," ACM Transactions on Information Systems (TOIS), v.20 n.4, p.422-446, October 2002.   DOI   ScienceOn
7 K. Jarvelin and J. Kekalainen, "IR evaluation methods for retrieving highly relevant documnets," In Proceedings of the ACM conference on Research and Development on Information Retrieval (SIGIR), pp.41-48, 2000.
8 정부연, "2006년 인터넷 화두 웹 2.0(Web2.0)," 기술동향, 2006.
9 Farooq U., Yang Song, Carroll J.M., and Giles C.L., "Social Bookmarking for Scholarly Digital Libraries," Internet Computing, IEEE, Nov.-Dec. 2007.
10 http://delicious.com/
11 http://www.bibsonomy.org/
12 http://mar.gar.in
13 이시화, 무효려, 이만형, 황대훈, "web2.0 환경에서의 Tag Clustering 시스템 설계 및 구현," 한국멀티미디어학회, Vol.10, No.1, pp.251-254, 2007.
14 이시화, 이만형, 황대훈, "web2.0에서의 Tag Clustering을 통한 이미지 검색의 효율성 분석," 한국멀티미디어학회, Vol. 10, No.2, 2007.