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Knowledge acquisition data visualization in elearning delivery

  • Atis Kapenieks*
  • , Iveta Daugule
  • , Kristaps Kapenieks
  • , Viktors Zagorskis
  • , Janis Kapenieks
  • , Zanis Timsans
  • , Ieva Vitolina
  • *Šī darba korespondējošais autors
  • Riga Technical University

Zinātniskās darbības rezultāts: Nodaļa grāmatā/enciklopēdijā/konferences krājumāKonferences zinātniskais rakstsPētniecībakoleģiāli recenzēts

2 Atsauces (Scopus)

Kopsavilkums

The aim of the study is to create the complete landscape model for learner behavior and knowledge acquisition data, and mapping the real learner performance data on it. This paper reports on a TELECI approach for learner knowledge acquisition data visualization. We present the new metrics for determination the relevance of the e-course content and delivery approach to learners. This approach 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 user learning performance data are generated in the TELECI e-learning environment with additional short, easy-to-use multiple-choice questions before and after each content subunit. This approach was well accepted by learners. The learner knowledge acquisition data are visualized on knowledge acquisition surface. This surface is calculated from the set of artificial data. The experimental data are positioned in curves called “telecides”. The presented telcide of Basic Business course delivered for 61 students’ group describes the appropriateness of each course unit to the learning needs of student group. We present also the experimental data on the learning acquisition surface from individual students. Each point corresponds learning acquisition for one student.

OriģinālvalodaAngļu
Rīkotāja publikācijas nosaukumsCSEDU 2020 - Proceedings of the 12th International Conference on Computer Supported Education
RedaktoriH. Chad Lane, Susan Zvacek, James Uhomoibhi
IzdevējsSciTePress
Lapas507-513
Lapu skaits7
ISBN (Elektroniski)9789897584176
Publikācijas statussPublicēts - 2020
Ārēji publicēts
Pasākums12th International Conference on Computer Supported Education, CSEDU 2020 - Virtual, Online
Ilgums: 2 maijs 20204 maijs 2020

Publikāciju sērijas

NosaukumsCSEDU 2020 - Proceedings of the 12th International Conference on Computer Supported Education
Sējums2

Konference

Konference12th International Conference on Computer Supported Education, CSEDU 2020
PilsētaVirtual, Online
Periods2/05/204/05/20

ANO IAM

Šis izpildes rezultāts palīdz sasniegt šādus ANO ilgtspējīgas attīstības mērķus (IAM)

  1. 4. IAM — Kvalitatīva Izglītība
    4. IAM — Kvalitatīva Izglītība

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