Hierarchical Learning Management System for the Insurance Industry

Authors

  • Stoyan Cheresharov Plovdiv University "Paisii Hilendarski"
  • Hristo Hristov Plovdiv University „Paisii Hilendarski“
  • Veneta Tabakova-Komsalova Plovdiv University „Paisii Hilendarski“
  • Veselina Naneva Plovdiv University „Paisii Hilendarski“

DOI:

https://doi.org/10.3991/ijet.v17i21.33595

Keywords:

Learning Management System, LMS, Hierarchic LMS

Abstract


This paper describes a model of a Hierarchical Learning Management System (HLMS) for the insurance industry. The problem is that LMSs are widely used, but not suitable for each educational environment and domain. The existing LMSs are with the general purpose and do not reflect the specific needs of different domains. The proposed LMS is a specific hierarchic system specially created for the insurance industry. The model uses a hierarchic approach to share, organize and present the learning content. It allows for building an LMS specific for the insurance industry which is reliable, efficient, fast, and easy to use by the insurance professionals.

Author Biographies

Hristo Hristov, Plovdiv University „Paisii Hilendarski“

Hristo Hristov is an assistant professor at the Faculty of Mathematics and Informatics at Plovdiv University „Paisii Hilendarski“, Plovdiv, Bulgaria

Veneta Tabakova-Komsalova , Plovdiv University „Paisii Hilendarski“

Veneta Tabakova-Komsalova is an assistant professor at the Faculty of Mathematics and Informatics at Plovdiv University „Paisii Hilendarski“, Plovdiv, Bulgaria.

Veselina Naneva, Plovdiv University „Paisii Hilendarski“

Veselina Naneva is an assistant professor at the Faculty of Mathematics and Informatics at Plovdiv University „Paisii Hilendarski“, Plovdiv, Bulgaria.

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Published

2022-11-15

How to Cite

Cheresharov, S., Hristov, H., Tabakova-Komsalova , V., & Naneva, V. (2022). Hierarchical Learning Management System for the Insurance Industry. International Journal of Emerging Technologies in Learning (iJET), 17(21), pp. 123–134. https://doi.org/10.3991/ijet.v17i21.33595

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Section

Papers