Abstract
In the traditional e-learning environment lack of immediate learning assistance. This online adaptive learning and recommendation platform (ALR) provide tracking tool for instructors to “observe” or “monitor” individual students’ learning activities. Students can learn through the ALR platform using the learning path to get the immediate assistance. Individual students’ learning strengths and weaknesses can be revealed via analyzing learning activities, learning process, and learning performance. Related analysis results can be utilized to develop corresponding automatic interventions in order to achieve goals of adaptive learning. Therefore, the purpose of this study aims to construct the concept map for adaptive learning, provide educational recommender for individual students. On the top of these prior projects, this project will develop the following intelligent components: (1) personalized dynamic concept maps for adaptive learning; (2) personalized learning path recommendation; and (3) context-based recommendation for meeting personal learning needs. Each of components will be strictly validated to ensure its practicability. This study introduce the ALR platform.
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References
Brusilovsky, P.: Adaptive and intelligent web-based educational systems. Int. J. Artif. Intell. Educ. 13(2–4), 159–172 (2003)
Burke, R.: Hybrid recommender systems: survey and experiments. User Model. User-Adap. Inter. 12(4), 331–370 (2002)
Chan, A.T., Chan, S.Y., Cao, J. (2001). SAC: a self-paced and adaptive courseware system. In: Proceedings IEEE International Conference on Advanced Learning Technologies, 2001. pp. 78–81. IEEE (2001)
Chen, C.M.: Intelligent web-based learning system with personalized learning path guidance. Comput. Educ. 51(2), 787–814 (2008)
Junyi Academy (2016). http://www.junyiacademy.org/
Novak, J.D.: Learning, Creating, and Using Knowledge: Concept Maps as Facilitative Tools in Schools and Corporations. Lawrence Erlbaum and Associates, New Jersey (1998)
Park, D.H., Kim, H.K., Choi, I.Y., Kim, J.K.: A literature review and classification of recommender systems research. Expert Syst. Appl. 39(11), 10059–10072 (2012)
Riverin, S., Stacey, E.: Sustaining an online community of practice: a case study. Int. J. E-Learning Distance Educ. 22(2), 43–58 (2008)
Santos, O.C.: Educational Recommender Systems and Technologies: Practices and Challenges. IGI Global, Hershey (2011)
Šimko, M., Barla, M., Bieliková, M.: ALEF: A Framework for Adaptive Web-Based Learning 2.0. In: Reynolds, N., Turcsányi-Szabó, M. (eds.) KCKS 2010. IAICT, vol. 324, pp. 367–378. Springer, Heidelberg (2010). doi:10.1007/978-3-642-15378-5_36
Acknowledgements
This study is conducted under the “III Innovative and Prospective Technologies Project” of the Institute for Information Industry which is subsidized by the Ministry of Economy Affairs of the Republic of China and sponsored by the Ministry of Science and Technology MOST, under Grant No. MOST 105-2511-S-024-009 and MOST 104-2511-S-468- 002-MY2.
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Tseng, HC., Chiang, CF., Su, JM., Hung, JL., Shelton, B.E. (2017). Building an Online Adaptive Learning and Recommendation Platform. In: Wu, TT., Gennari, R., Huang, YM., Xie, H., Cao, Y. (eds) Emerging Technologies for Education. SETE 2016. Lecture Notes in Computer Science(), vol 10108. Springer, Cham. https://doi.org/10.1007/978-3-319-52836-6_45
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