Study of the effective use pattern using Data Mining in a mobile grid

모바일 그리드에서 데이터마이닝을 이용한 효율적인 사용자 패턴 연구

  • 김휴찬 (제주한라대학교 디지털콘텐츠과) ;
  • 김미정 (제주한라대학교 보건행정과)
  • Published : 2013.06.30

Abstract

The purpose of this study is to make effective mobile grid considered general environment, which can be summarized as irregular mobility, service exploration, data sharing, variety of machines, limit to the battery duration, etc. The data was extracted from the Dartmouth College. We analysed mobile use pattern of a specific group and applied pattern using hybrid method. As a result, we could adjust infra usage effectively and appropriately and cost cutting and increase satisfaction of user. In this study, by applying weighting method based on access time interval, we analysed use pattern added time variation with association rule during users in mobile grid environment. We proposed more stable way to manage patterns in a mobile grid environment that is being used as a hybrid form to process the data value received from the server in real time. Further studies are needed to get appropriate use pattern by group using use patterns of various groups.

Keywords

References

  1. Foster, I & Kesselman, C & Tueke, S. The Anatomy of the Grid:Endabling Scalable Vitual Organizations International Journal of Supercomputing Application, 2001.
  2. Ian Foster & Kesselman., The Grid2: Blueprint for a new Computing Infrastructure Morgan kaufmann Publishers, 1998.
  3. Tomas p. & Lioyd, H & Chris, D., Challenge: Intergrating Mobile Wiress Devies Into the the Computational Grid MOBICOM 02, sep, 2002.
  4. Ian Foster & Kesselman., The Grid2: Blueprint for a new Computing Infrastructure Morgan kaufmann Publishers, 2004.
  5. I, Foster A, Roy & V. Sander., A Quality of Service archiecture that Combiens Resoures Reservation and Application 8th International Workshop on Quality of Service, 2000.
  6. P. Ghosh, N. Roy, S K. Das & K Basu, A Game Theory Based Pricing Stategy for Job Allocation in Mobile Grids Proceedings of 18th International Parallel and Distributed Processing Symposium Santa FE, New Mexico, 2004.
  7. Forman, G & Zahorijan, J., The Challenges of Mobile Computing. IEEE Computer, 27(4), 1994.
  8. Umar, F & Wajeeha k., A Generic Mobility Model For Resource Prediction in Mobile Grid IEEE CTS, 2006, pp.189-193.
  9. Ghosh, p & Roy, N & Das, S. K, Mobility-Aware Efficient Job Schedulling in Mobile Grid CCGRid May, 2007, pp.702-706.
  10. Megdalena, B & Paul C, Characteri zing Mobility and Network Usage in a Corporate Wireless Local-Area Network, MOBISYS, May(1), 2003.
  11. M Fukuda, Y Tanaka, N Suzuki, Lubomir F bir & S Kobasyashi, 2003.
  12. 이대원, "모바일 그리드컴퓨팅에서 효율적인 자원확보와 이동성 관리기법," 한국컴퓨터교육학회, 제13권 제1호, 2010, pp.54-64.
  13. 송성진, 정순영, 유헌창 "모바일그리드에서 모바일장치의 이용패턴을 고려한 작업 스케줄링 기법," 컴퓨터교육학회, 제11권 제3호, 2008, pp.91-99.
  14. 김한수, 황인준 "모바일 환경에서 데이터마이닝을 적용한 하이브리드 데이터 브로드캐스트 기법," 한국정보과학회 학술발표, vol. 30, No. 2, 2003, pp.298-300.
  15. Kotz, D & Henderson, T & Abyzov, CRAWDAD [dataset] Dartmouth/campus, 2007
  16. Cezary Z Janikow, "Fuzzy Decision Trees: Issues and Method," IEEE Transcations on sysems Man, and Cybernetics-Part B:Cybernetics. Vol 28, No 1 Feb. 1998.
  17. 장중혁, "발생 간격 기반 가중치 부여 기법을 활용한 데이터 스트림에서 가중치 순차패턴 탐색," 지능정보연구, 제16권, 제3호, 2019. 9, pp.55-75.