Color Differentiation of Digital Risks in Teacher Education

Introduction. At the present stage of education digital transformation, the urgent task is being addressed to train educators who are ready to meet the challenges and risks of a changing and unstable digital world. Digital risks differentiating and adjusting the course of digital learning for future...

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Main Authors: Maxim L. Grunis, Galiya I. Kirilova
Format: Article
Language:Russian
Published: National Research Mordova State University 2023-06-01
Series:Интеграция образования
Subjects:
Online Access:https://edumag.mrsu.ru/index.php/en/articles-en/122-23-2/1096-10-15507-1991-9468-111-027-202302-9
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author Maxim L. Grunis
Galiya I. Kirilova
author_facet Maxim L. Grunis
Galiya I. Kirilova
author_sort Maxim L. Grunis
collection DOAJ
description Introduction. At the present stage of education digital transformation, the urgent task is being addressed to train educators who are ready to meet the challenges and risks of a changing and unstable digital world. Digital risks differentiating and adjusting the course of digital learning for future educators constitute the study problem and goal. The paper draws attention to the issues of digital transformation in the educational system carried out under conditions of uncertainty, as well as ways and opportunities to adjust the course of digital learning, ensuring the readiness of future teachers for the changes that are coming in the near and distant future. Materials and Methods. Leading research methods: system analysis of digital risks in teacher education, scenario modeling of network interactions and digital learning in basic risk situations, pedagogical experiment. The dynamic set of analytical and predictive judgments of future teachers about the possibilities of overcoming risk situations constitute the experimental materials. In research, digital risks are differentiated by three definable parameters: subjective sense of danger, relative risk and probability of threat. Results. The algorithmic model provides risk classification features and color codes. Their influence on the choice of safe behavior strategies in basic risk situations associated with networking and digital learning is described. The study reveals the authorʼs idea of risks color differentiation, which in this paper is illustrated by examples of teachers’ professional activities in networking and digital learning situations. The paper practical significance lies in pedagogical influences of algorithmic model approbation in risks situations of different danger levels: especially dangerous, moderate and underestimated risks in the dynamic digital space. It is concluded that actions in danger situations can be effectively regulated by light signals similar to a modified traffic light. Each signal can be matched with an individual scenario included a stereotypical behavior algorithms set that is assigned considering the real danger and subjective feeling on it, the basic scenario and prediction corresponding to it. The survey final measurements showed that the future teachers who passed the experimental training significantly decreased their subjective sense of danger. Discussion and Conclusion. The pedagogical experiment reveals that the study of risk situations, pedagogical activity scenario modeling and orientation to color cues in typical risk situations reduce the teachers’ uncertainty sense and give positive shifts in teachers’ training.
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spelling doaj.art-e078e3d3be2e454fbfa0bb3ca339ad962023-06-29T12:48:09ZrusNational Research Mordova State UniversityИнтеграция образования1991-94682308-10582023-06-0127232533910.15507/1991-9468.111.027.202302.325-339Color Differentiation of Digital Risks in Teacher EducationMaxim L. Grunis0https://orcid.org/0000-0002-6952-0472Galiya I. Kirilova1https://orcid.org/0000-0002-4089-9554 Kazan ( Volga Region) Federal UniversityKazan (Volga Region) Federal UniversityIntroduction. At the present stage of education digital transformation, the urgent task is being addressed to train educators who are ready to meet the challenges and risks of a changing and unstable digital world. Digital risks differentiating and adjusting the course of digital learning for future educators constitute the study problem and goal. The paper draws attention to the issues of digital transformation in the educational system carried out under conditions of uncertainty, as well as ways and opportunities to adjust the course of digital learning, ensuring the readiness of future teachers for the changes that are coming in the near and distant future. Materials and Methods. Leading research methods: system analysis of digital risks in teacher education, scenario modeling of network interactions and digital learning in basic risk situations, pedagogical experiment. The dynamic set of analytical and predictive judgments of future teachers about the possibilities of overcoming risk situations constitute the experimental materials. In research, digital risks are differentiated by three definable parameters: subjective sense of danger, relative risk and probability of threat. Results. The algorithmic model provides risk classification features and color codes. Their influence on the choice of safe behavior strategies in basic risk situations associated with networking and digital learning is described. The study reveals the authorʼs idea of risks color differentiation, which in this paper is illustrated by examples of teachers’ professional activities in networking and digital learning situations. The paper practical significance lies in pedagogical influences of algorithmic model approbation in risks situations of different danger levels: especially dangerous, moderate and underestimated risks in the dynamic digital space. It is concluded that actions in danger situations can be effectively regulated by light signals similar to a modified traffic light. Each signal can be matched with an individual scenario included a stereotypical behavior algorithms set that is assigned considering the real danger and subjective feeling on it, the basic scenario and prediction corresponding to it. The survey final measurements showed that the future teachers who passed the experimental training significantly decreased their subjective sense of danger. Discussion and Conclusion. The pedagogical experiment reveals that the study of risk situations, pedagogical activity scenario modeling and orientation to color cues in typical risk situations reduce the teachers’ uncertainty sense and give positive shifts in teachers’ training.https://edumag.mrsu.ru/index.php/en/articles-en/122-23-2/1096-10-15507-1991-9468-111-027-202302-9risk differentiationnetworkingdigital learningpedagogical educationdynamic information environment
spellingShingle Maxim L. Grunis
Galiya I. Kirilova
Color Differentiation of Digital Risks in Teacher Education
Интеграция образования
risk differentiation
networking
digital learning
pedagogical education
dynamic information environment
title Color Differentiation of Digital Risks in Teacher Education
title_full Color Differentiation of Digital Risks in Teacher Education
title_fullStr Color Differentiation of Digital Risks in Teacher Education
title_full_unstemmed Color Differentiation of Digital Risks in Teacher Education
title_short Color Differentiation of Digital Risks in Teacher Education
title_sort color differentiation of digital risks in teacher education
topic risk differentiation
networking
digital learning
pedagogical education
dynamic information environment
url https://edumag.mrsu.ru/index.php/en/articles-en/122-23-2/1096-10-15507-1991-9468-111-027-202302-9
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