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TELECI approach for e-learning user behavior data visualization and learning support algorithm

  • Atis Kapenieks
  • , Iveta Daugule
  • , Kristaps Kapenieks
  • , Viktors Zagorskis
  • , Janis Kapenieks
  • , Zanis Timsans
  • , Ieva Vitolina
  • Riga Technical University

Research output: Contribution to journalArticlepeer-review

6 Citations (Scopus)

Abstract

The user behavior data generated in the TELECI learning environment with additional short, easy-to-use multiple-choice questions before and after each content subunit are used for visualization and correlation analysis. Three user behavior data clusters were identified in data landscape. The student behavior change among the TELECI-clusters was used for TELECI learning support algorithm design. The student performance data before and after learning the econtent were used for knowledge acquisition model design. This model is based on the assumption that knowledge acquisition of real e-content can be quantified by superposition of the impact of learning "perfect" content, too easy content, and too complicated content. The learner knowledge acquisition surface is calculated on this assumption. The data of real course learner knowledge acquisition are located on this surface as "telecides". Telecides are the visualization of the appropriateness of an e-content unit for the needs of the specific learner or learners target group.1.

Original languageEnglish
Pages (from-to)129-142
Number of pages14
JournalBaltic Journal of Modern Computing
Volume8
Issue number1
DOIs
Publication statusPublished - 2020
Externally publishedYes

Keywords

  • E-Learning
  • Learning Activity
  • Learning Data
  • Motivation
  • Telecide
  • User Behavior

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