학습자 행위 선호도에 기반한 적응적 학습 시스템

An Adaptive Learning System based on Learner's Behavior Preferences

  • 김용세 (성균관대 창의적설계추론 지적교육시스템 연구단) ;
  • 차현진 (성균관대 창의적설계추론 지적교육시스템 연구단) ;
  • 박선희 (성균관대 창의적설계추론 지적교육시스템 연구단) ;
  • 조윤정 (성균관대 창의적설계추론 지적교육시스템 연구단) ;
  • 윤태복 (성균관대 창의적설계추론 지적교육시스템 연구단) ;
  • 정영모 (성균관대 정보통신공학부) ;
  • 이지형
  • Kim, Yong-Se (Creative Design and Intelligent Tutoring Systems Research Center Sungkyunkwan University) ;
  • Cha, Hyun-Jin (Creative Design and Intelligent Tutoring Systems Research Center Sungkyunkwan University) ;
  • Park, Seon-Hee (Creative Design and Intelligent Tutoring Systems Research Center Sungkyunkwan University) ;
  • Cho, Yun-Jung (Creative Design and Intelligent Tutoring Systems Research Center Sungkyunkwan University) ;
  • Yoon, Tae-Bok (Creative Design and Intelligent Tutoring Systems Research Center Sungkyunkwan University) ;
  • Jung, Young-Mo (Creative Design and Intelligent Tutoring Systems Research Center Sungkyunkwan University) ;
  • Lee, Jee-Hyong (School of Information & Communication Engineering Sungkyunkwan University)
  • 발행 : 2006.02.13

초록

Advances in information and telecommunication technology increasingly reveal the potential of computer supported education. However, most computer supported learning systems until recently did not pay much attention to different characteristics of individual learners. Intelligent learning environments adaptive to learner's preferences and tasks are desired. Each learner has different preferences and needs, so it is very crucial to provide the different styles of learners with different learning environments that are more preferred and more efficient to them. This paper reports a study of the intelligent learning environment where the learner's preferences are diagnosed using learner models, and then user interfaces are customized in an adaptive manner to accommodate the preferences. In this research, the learning user interfaces were designed based on a learning-style model by Felder & Silverman, so that different learner preferences are revealed through user interactions with the system. Then, a learning style modeling is done from learner behavior patterns using Decision Tree and Neural Network approaches. In this way, an intelligent learning system adaptive to learning styles can be built. Further research efforts are being made to accommodate various other kinds of learner characteristics such as emotion and motivation as well as learning mastery in providing adaptive learning support.

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