A Next Generation Intelligent Mobile Commerce System
Mobile Commerce(M-commerce) has some common critical problems such as the constraints on the small mobile device in both display and memory size, expensive charge system, limited contents, and so on. In this paper we propose some integrated solutions for solving these problems as follows: 1) personalized contents providing to increase the usability of the small device by reducing the amount of information transferred to the device with personalization policy. 2) a middlet application to support user’s purchase activities such as product searching, ordering and settlement on the device with a minimum network connection. 3) automated contents builder to cope with the currently limited M-commerce contents.
The proposed system has been designed and implemented to demonstrate its effectiveness through experiments.
Keywordsmobile commerce automatic contents builder personalization middlet application intelligent agent XML translator recommendation ontology server
Unable to display preview. Download preview PDF.
- 5.Yang, J., Seo, H., Choi, J.: MORPHEUS: A Customized Comparison Shopping Agent. In: 5th International Conference on Autonomous Agents (Agents-2001), Montreal, Canada, pp. 63–64 (2001)Google Scholar
- 6.Thorsteinn, S.: Lecture Note: Self-Organizing Algorithms, http://www.hh.se/staff/denni/
- 7.IBM Almaden Research Center, Mining Sequential Patterns, http://www.cs.duke.edu/~geng/
- 8.Glushko, R.J., Tenenbaum, J.M., Meltzer, B.: An XML framework for agent based Ecommerce. Communications of the ACM 42(3) (March 1999)Google Scholar
- 9.Tveit, A.: Peer-to-peer based recommendations for mobile commerce. In: Proceedings of the first international workshop on Mobile commerce (July 2001)Google Scholar
- 10.Papazoglou, M.P.: Agent-oriented technology in support of e-business. Communications of the ACM 44(4) (April 2001)Google Scholar
- 12.Varshney, U., Vetter, R.J., Kalakota, R.: Mobile Commerce: A New Frontier. IEEE Computer 33(10), 32–38 (2000)Google Scholar
- 13.Purdom, P., Gucht, D.V.: Average Case Performance of the Apriori Algorithm Technical reports from Indiana University Computer Science DepartmentGoogle Scholar