Personalized Course Evolutionary Based on Genetic Algorithm

نویسنده

  • WenZhi Han
چکیده

The paper presents an evolution of personalized courses based on genetic algorithms (PCEGA). The genetic algorithm are successfully applied in the dynamic update process of the course during the whole learning process. Under this framework of this algorithm, the target user model updates dynamically, and the courses evolve during the process. It provides a good general purpose and scalable framework that addresses the personalized course generation in an online learning environment.

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تاریخ انتشار 2014