Personalization of learning using adaptive technologies and augmented
reality
- URL: http://arxiv.org/abs/2011.05802v1
- Date: Sun, 8 Nov 2020 21:34:05 GMT
- Title: Personalization of learning using adaptive technologies and augmented
reality
- Authors: Maiia Marienko, Yulia Nosenko, Mariya Shyshkina
- Abstract summary: The research aims at developing the recommendations for educators on using adaptive technologies and augmented reality in personalized learning implementation.
The prospects of the adaptive cloud-based systems design in the context of teachers training are evaluated.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The research is aimed at developing the recommendations for educators on
using adaptive technologies and augmented reality in personalized learning
implementation. The latest educational technologies related to learning
personalization and the adaptation of its content to the individual needs of
students and group work are considered. The current state of research is
described, the trends of development are determined. Due to a detailed analysis
of scientific works, a retrospective of the development of adaptive and, in
particular, cloud-oriented systems is shown. The preconditions of their
appearance and development, the main scientific ideas that contributed to this
are analyzed. The analysis showed that the scientists point to four possible
types of semantic interaction of augmented reality and adaptive technologies.
The adaptive cloud-based educational systems design is considered as the
promising trend of research. It was determined that adaptability can be
manifested in one or a combination of several aspects: content, evaluation and
consistency. The cloud technology is taken as a platform for integrating
adaptive learning with augmented reality as the effective modern tools to
personalize learning. The prospects of the adaptive cloud-based systems design
in the context of teachers training are evaluated. The essence and place of
assistive technologies in adaptive learning systems design are defined. It is
shown that augmented reality can be successfully applied in inclusive
education. The ways of combining adaptive systems and augmented reality tools
to support the process of teachers training are considered. The recommendations
on the use of adaptive cloud-based systems in teacher education are given.
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