Clustering and Making Decisions Methods for Intelligent Systems
نویسندگان
چکیده
The processes involved in the classification of objects and word problems continue being a complex and ill-structured problem. In this paper, a software tool for Hypermedia Intelligent Tutoring Systems is proposed. This tool helps us to define the complexity levels for a set of proposed problems to students. In this way, the intelligent systems designers and professors can use it to organize the problem base. On the other hand, this tool constitutes an important element during training and learning process because it permits to organize the transit from simple to complex in problem solving. It uses different methods of classification, like as statistical methods, experts’ proofs and others. The evaluations of parameters can involve objective and subjective elements. In this relation, a particular version of Delphi Method is developed. The system was implemented on Delphi 4.0 for Windows.
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