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MASACAD: a multiagent based approach to information customization

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1 Author(s)
M. S. Hamdi ; Dept. of Comput. Sci., Qatar Univ., Doha, Qatar

MASACAD is a multiagent information customization system that adopts the machine-learning paradigm to advise students by mining the Web. In the distributed problem-solving paradigm, systems can distribute among themselves the processes necessary to accomplish a given task. Given the number of problems that distributed processing can address, AI researchers have directed significant effort toward developing specialized problem-solving systems that can interact in their search for a solution. The multiagent-system paradigm embodies this approach.

Published in:

IEEE Intelligent Systems  (Volume:21 ,  Issue: 1 )