Personalized web-based tutoring system based on fuzzy item response theory

With the rapid growth of computer and Internet technologies, e-learning has become a major trend in the computer assisted teaching and learning field. Previously, many researchers put effort into e-learning systems with personalized learning mechanism to aid on-line learning. However, most systems focus on using learner's behaviors, interests, and habits to provide personalized e-learning services. These systems commonly neglect to consider if learner ability and the difficulty level of the recommended courseware are matched to each other. Frequently, unsuitable courseware causes learner's cognitive overload or disorientation during learning. To promote learning effectiveness, our previous study proposed a personalized e-learning system based on Item response theory (PEL-IRT), which can consider both course material difficulty and learner ability evaluated by learner's crisp feedback responses (i.e. completely understanding or not understanding answer) to provide personalized learning paths for individual learners. The PEL-IRT cannot estimate learner ability for personalized learning services according to learner's non-crisp responses (i.e. uncertain/fuzzy responses). The main problem is that learner's response is not usually belonging to completely understanding or not understanding case for the content of learned courseware. Therefore, this study developed a personalized intelligent tutoring system based on the proposed fuzzy item response theory (FIRT), which could be capable of recommending courseware with suitable difficulty levels for learners according to learner's uncertain/fuzzy feedback responses. The proposed FIRT can correctly estimate learner ability via the fuzzy inference mechanism and revise estimating function of learner ability while the learner responds to the difficulty level and comprehension percentage for the learned courseware. Moreover, a courseware modeling process developed in this study is based on a statistical technique to establish the difficulty parameters of courseware for the proposed personalized intelligent tutoring system. Experiment results indicate that applying the proposed FIRT to web-based learning can provide better learning services for individual learners than our previous study, thus helping learners to learn more effectively.

[1]  R. Hambleton,et al.  Item Response Theory: Principles and Applications , 1984 .

[2]  Hahn-Ming Lee,et al.  Personalized e-learning system using Item Response Theory , 2005, Comput. Educ..

[3]  John Riedl,et al.  Ganging up on Information Overload , 1998, Computer.

[4]  Peter Brusilovsky,et al.  Adaptive and Intelligent Technologies for Web-based Eduction , 1999, Künstliche Intell..

[5]  Yoav Shoham,et al.  Fab: content-based, collaborative recommendation , 1997, CACM.

[6]  Rajeev Motwani,et al.  The PageRank Citation Ranking : Bringing Order to the Web , 1999, WWW 1999.

[7]  Boris Chidlovskii,et al.  Collaborative Re-Ranking of Search Results , 2000 .

[8]  Howard Wainer,et al.  Computerized Adaptive Testing: A Primer , 2000 .

[9]  Kristian J. Hammond,et al.  Mining navigation history for recommendation , 2000, IUI '00.

[10]  C. Lee Giles,et al.  Searching the Web: general and scientific information access , 1999, First IEEE/POPOV Workshop on Internet Technologies and Services. Proceedings (Cat. No.99EX391).

[11]  Frank B. Baker,et al.  Item Response Theory: Parameter Estimation Techniques. , 1994 .

[12]  Robert L. McKinley,et al.  An Introduction to Item Response Theory. , 1989 .

[13]  Ioannis Hatzilygeroudis Using a hybrid rule-based approach in developing an intelligent tutoring system with knowledge acquisition and update capabilities , 2004, Expert Syst. Appl..

[14]  R. Likert “Technique for the Measurement of Attitudes, A” , 2022, The SAGE Encyclopedia of Research Design.

[15]  George D. Magoulas,et al.  Towards new forms of knowledge communication: the adaptive dimension of a web-based learning environment , 2002, Comput. Educ..

[16]  H. Zimmermann Fuzzy sets, decision making, and expert systems , 1987 .

[17]  Jon Kleinberg,et al.  Authoritative sources in a hyperlinked environment , 1999, SODA '98.

[18]  Rynson W. H. Lau,et al.  Personalized courseware construction based on Web data mining , 2000, Proceedings of the First International Conference on Web Information Systems Engineering.

[19]  Badrul H. Khan,et al.  Web-based instruction , 1997 .

[20]  Fritz Drasgow,et al.  Item response theory : application to psychological measurement , 1983 .

[21]  Hal Berghel,et al.  Cyberspace 2000: dealing with information overload , 1997, CACM.

[22]  Koichi Takeda,et al.  Information retrieval on the web , 2000, CSUR.

[23]  Maria Virvou,et al.  Analysis and design of a Web-based authoring tool generating intelligent tutoring systems , 2003, Comput. Educ..

[24]  Peter Brusilovsky,et al.  Adaptive educational systems on the World Wide Web , 1998 .

[25]  Jaideep Srivastava,et al.  Automatic personalization based on Web usage mining , 2000, CACM.

[26]  Myung-Geun Lee,et al.  Profiling students' adaptation styles in Web-based learning , 2001, Comput. Educ..

[27]  Sriram Raghavan,et al.  Searching the Web , 2001, ACM Trans. Internet Techn..