Creation the Model of Educational and Methodical Support Based on Fuzzy Logic

Chapter
Part of the Studies in Fuzziness and Soft Computing book series (STUDFUZZ, volume 317)

Abstract

This article is devoted to the design and construction of automated an educational complex architecture, researched and specified basic, necessary and sufficient, models and methods capable of qualitatively improve the efficiency of the educational process. The original system of representation of educational materials will upgrade the quality of training programs, plans, and appropriate teaching and learning materials to meet the light of the above requirements. It imposes more stringent requirements for their content in terms of the feasibility of monitoring tasks of understanding and mastering. On the basis of the results of research and development can be efficiently and effectively reorganized the existing and, if necessary, set up corresponding new intelligent systems and information infrastructure of individual universities and the entire education system as a whole in compliance with the principles of systematization, templates, and modularity.

Keywords

Control automation Intellectualization of complex processes Minimal teacher participation Information systems Expert systems Information models An intelligent system of education 

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Copyright information

© Springer International Publishing Switzerland 2014

Authors and Affiliations

  1. 1.Department of Information Technology and ProgrammingAzerbaijan Technical UniversityBakuAzerbaijan

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