Design of Intelligent Teaching System Based on Data Mining Technology

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Abstract:

Data mining technology into the teaching system, the biggest advantage is that the system can gather large amounts of data for analysis , digging out of the course content and teaching strategies presented useful information on the adjustment in order to build content-rich smart teaching platform . This paper mainly made use of data mining techniques to solve the data mining technology is introduced into the system in order to fully improve the system for students and student learning characteristics of the implementation of individualized teaching of intelligence, flexibility in learning mode , the number of users and courses content scalability , research and development of an online learning system . With these results the general software development technology applied to intelligent tutoring system for students to build an adaptive, personalized student-centered learning platform.

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Advanced Materials Research (Volumes 834-836)

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998-1001

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October 2013

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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