ICOIN 2005: Information Networking. Convergence in Broadband and Mobile Networking pp 390-400 | Cite as
An Efficient Broadcast Scheme for Wireless Data Schedule Under a New Data Affinity Model
Abstract
Data schedule in broadcasting is playing a more importance role due to increasing demand for large client popularity and vast amount of information. For system with multipoint queries, data records which queried by same query are broadcasted contiguously to reduce the average access time. Several techniques have been used in clustering data by defining the affinity between them. The data affinity function defined was mainly aiming at minimizing the linear Query Distance. However, our work showing that in order to minimize the average access time, the objective function shall be in quadratic form. We propose a MinimumGap algorithm(MG) which merge relevant segments base on this new affinity function. Through extensive experiments, the results show not only the query’s access time can be reduced by using this new affinity function, by using a dummy segment to speed our algorithm, the scheme we proposed have significant saving on both time complexity and memory space complexity.
Preview
Unable to display preview. Download preview PDF.
References
- 1.Chung, Y.D., Bang, S., Kim, M.: An efficient broadcast data clustering method for multipoint queries in wireless information systems. The journal of Systems and Software, 173–181 (2002)Google Scholar
- 2.Chung, Y.D., Kim, M.: Effective data Placement for wireless Broadcast. Distributed and Parallel databases 9, 133–150 (2001)MATHCrossRefGoogle Scholar
- 3.Sahni, S., Gonzalez, T.: P-complete Approximation Problem. Journal of the ACM 23, 555–565 (1976)MATHCrossRefMathSciNetGoogle Scholar
- 4.Chung, Y.D., Kim, M.: A wireless data clustering method for multipoint queries. Decision support System 30(4), 469–482Google Scholar
- 5.Lee, G., Yeh, M.-S., Lo, S.-C., Chen, A.L.P.: A strategy for efficient access of multiple data items in mobile environments. In: Proceeding of the thid international conference on Mobile Data Management (2002)Google Scholar
- 6.Huqng, J.-L., Chen, M.-S.: Dependent data broadcasting for unorder queries in a multiple channel mobile environment. IEEE transactions on Knowledge and Data Engineering, 1143–1156 (2004)Google Scholar
- 7.Li, J., Lillis, J., Liu, L.-T.: New Spectral linear placement and clustering approach. In: Proceedings of the 33rd annual conference on Design automation, pp. 88–93 (1996)Google Scholar
- 8.Chan, P.K., Schlag, M.D.F.: Spectral K-way ratio-cut partitioning and clustering. IEEE Transactions on Computer-Aided Design of Integrated Circuits and System, 1088–1096 (September 1994)Google Scholar
- 9.Peng, W.-C., Chen, M.-S.: Developing data allocation schemes by incremental mining of user moving patterns n a mobile computing system. IEEE Transactions on Knowledge and Data Engineering, 70–85 (January/February 2003)Google Scholar