Applied Sciences | 2021

Toward Adaptability of E-Evaluation: Transformation from Tree-Based to Graph-Based Structure

 
 

Abstract


The COVID-19 pandemic and quarantine have forced students to use distance learning Modern information technologies have enabled global e-learning usage but also revealed a lack of personalization and adaptation in the learning process when compared to face-to-face learning While adaptive e-learning methods exist, their practical application is slow because of the additional time and resources needed to prepare learning material and its logical adaptation To increase e-learning materials’ usability and decrease the design complexity of automated adaptive students’ work evaluation, we propose several transformations from a competence tree-based structure to a graph-based automated e-evaluation structure Related works were summarized to highlight existing e-evaluation structures and the need for new transformations Competence tree-based e-evaluation structure improvements were presented to support the implementation of top-to-bottom and bottom-to-top transformations Validation of the proposed transformation was executed by analyzing different use-cases and comparing them to the existing graph-to-tree transformation Research results revealed that the competence tree-based learning material storage is more reusable than graph-based solutions Competence tree-based learning material can be transformed for different purposes in graph-based e-evaluation solutions Meanwhile, graph-based learning material transformation to tree-based structure implies material redundancy, and the competence of the tree structure cannot be restored

Volume 11
Pages 4082
DOI 10.3390/APP11094082
Language English
Journal Applied Sciences

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