Title :
Adaptive course generation based on evolutionary algorithm
Author :
Shanshan Wan ; Cheng Lyu
Author_Institution :
Sch. of Comput. Sci. & Technol., Beijing Univ. of Civil Eng. & Archit., Beijing, China
Abstract :
For increasing demands on e-learning, many topics ensue to provide learners a more personalized learning experience and more suitable course and learning objects which is called Adaptive Course Generation problem(ACG). This article addresses how to support users´ personalized learning resources based on evolutionary PBIL (Population Based Incremental Learning) algorithm. Here both the users´ preferences and learning resources´ intrinsic characteristics are considered here. Some kinds of learning preferences are discussed briefly. Basic courses, itinerary courses and compulsory courses are also taken as important constraints for ACG. Moreover the granularity is discussed from both the point of experts and the point of the learning objects´ attributes. The above are modeled simply as a Constraint Satisfaction Problem (CSP). The objective function is to minimize the penalty function designed to evaluate the sequencing. The designed program is applied to Visual Basic course e-learning teaching with some quantity of freshmen. And it is tested on true teaching data and the statistics shows good validity, stability performance and it is popular with the participants.
Keywords :
computer aided instruction; constraint satisfaction problems; educational courses; evolutionary computation; further education; learning (artificial intelligence); teaching; ACG; CSP; Visual Basic course e-learning teaching; adaptive course generation; adaptive course generation problem; constraint satisfaction problem; course objects; e-learning; electronic learning; evolutionary PBIL algorithm; learning experience; learning objects; learning preference; objective function; personalized learning resources; population based incremental learning algorithm; user preference; Algorithm design and analysis; Educational institutions; Electronic learning; Genetic algorithms; Mathematical model; Sequential analysis; PBIL algorithm; adaptive course generation; granularity; personalized learning; preference;
Conference_Titel :
Information Science and Technology (ICIST), 2014 4th IEEE International Conference on
Conference_Location :
Shenzhen
DOI :
10.1109/ICIST.2014.6920357