Issue No. 01 - January/February (2006 vol. 21)
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/MIS.2006.14
Mohamed Salah Hamdi , University of Qatar
The huge amount of content available on the World Wide Web raises important questions over its effective use. To cope with such environments, the promise of information customization systems is becoming highly attractive. MASACAD is a multiagent system that learns to advise students by mining the Web. It approaches information customization using a multiagent paradigm in combination with aspects from machine learning, user modeling, and Web mining. <p>This article is part of a special issue on AI, Agents, and the Web.</p>
academic advising, information customization, multiagents, neural networks, Web mining, expert systems
M. S. Hamdi, "MASACAD: A Multiagent-Based Approach to Information Customization," in IEEE Intelligent Systems, vol. 21, no. , pp. 60-67, 2006.