A hybrid AHP-GA method for metadata-based learning object evaluation

M İnce, T Yiğit, AH Işık - Neural Computing and Applications, 2019 - Springer
M İnce, T Yiğit, AH Işık
Neural Computing and Applications, 2019Springer
A wide variety of demand in e-learning and web-based learning caused a new approach in
e-content presentation. In order to accomplish these demands, learning object repositories
(LORs) were developed. LORs have many learning objects (LOs) that are used to produce
different types of e-content. When there are many LOs in LORs, the evaluation and selection
of them become a subjective and time-consuming process. Thus, selecting the most suitable
and best qualified LO is considered as a multi-criteria decision-making (MCDM) problem. In …
Abstract
A wide variety of demand in e-learning and web-based learning caused a new approach in e-content presentation. In order to accomplish these demands, learning object repositories (LORs) were developed. LORs have many learning objects (LOs) that are used to produce different types of e-content. When there are many LOs in LORs, the evaluation and selection of them become a subjective and time-consuming process. Thus, selecting the most suitable and best qualified LO is considered as a multi-criteria decision-making (MCDM) problem. In this study, a hybrid analytic hierarchy process genetic algorithm (AHP-GA) method was developed for the evaluation of LOs from web-based Intelligent Learning Object Framework (Zonesa) LOR. This proposed hybrid system was used in a real case study and the results demonstrated that the proposed system can be used effectively by both users and machines to produce content by the help of LO metadata.
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