Symmetry (Mar 2015)

Teaching-Learning Activity Modeling Based on Data Analysis

  • Kyungrog Kim,
  • Yoo-Joo Choi,
  • Mihui Kim,
  • Jung-Won Lee,
  • Doo-Soon Park,
  • Nammee Moon

DOI
https://doi.org/10.3390/sym7010206
Journal volume & issue
Vol. 7, no. 1
pp. 206 – 219

Abstract

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Numerous studies are currently being carried out on personalized services based on data analysis to find and provide valuable information about information overload. Furthermore, the number of studies on data analysis of teaching-learning activities for personalized services in the field of teaching-learning is increasing, too. This paper proposes a learning style recency-frequency-durability (LS-RFD) model for quantified analysis on the level of activities of learners, to provide the elements of teaching-learning activities according to the learning style of the learner among various parameters for personalized service. This is to measure preferences as to teaching-learning activity according to recency, frequency and durability of such activities. Based on the results, user characteristics can be classified into groups for teaching-learning activity by categorizing the level of preference and activity of the learner.

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