Typology of schools operating in the Moscow Electronic School system based on the analysis of network indicators

Network analysis methods are actively used to research the behavior of digital repository users who utilize and create digital objects. At the same time, the research into the collective behavior of a group of participants who are members of the same school is much less common. The library of the Mo...

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Main Authors: Vachkova Svetlana, Petryaeva Elena, Patarakin Evgeny
Format: Article
Language:English
Published: EDP Sciences 2021-01-01
Series:SHS Web of Conferences
Subjects:
Online Access:https://www.shs-conferences.org/articles/shsconf/pdf/2021/09/shsconf_ec2020_03001.pdf
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author Vachkova Svetlana
Petryaeva Elena
Patarakin Evgeny
author_facet Vachkova Svetlana
Petryaeva Elena
Patarakin Evgeny
author_sort Vachkova Svetlana
collection DOAJ
description Network analysis methods are actively used to research the behavior of digital repository users who utilize and create digital objects. At the same time, the research into the collective behavior of a group of participants who are members of the same school is much less common. The library of the Moscow Electronic School is a rather complicated system with multiple roles offered to users. The actors of the repository are teachers, students, parents, and publishers – anyone performing any actions with the objects. In this study, the school is seen as an actor performing actions with objects – lesson scenarios within the Moscow Electronic School repository of digital objects. Within the study, the authors compare the sociograms of schools that unite teachers and the scenarios created by the teachers and divide schools into factions based on network indicators in sociograms. The main method of presenting and analyzing data is network analysis and sociogram creation. The authors identify two types of networks: the network of single participant’s relationships and the network of relationships of teachers from a single school. The authors not only describe the data structure in the Moscow Electronic School system that records the digital trace of every individual and collective user but also create a digital map that reflects the dynamics of actions in the Moscow Electronic School system and identify the indicators that characterize the common activity of key participants. Moreover, the authors identify graph factions for schools that characterize the degree of interaction between teachers: disconnected groups, sparse graphs, crystallization centers, dense graphs.
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spelling doaj.art-6e1447b122b44b849a32d6053b2be52b2022-12-21T21:55:57ZengEDP SciencesSHS Web of Conferences2261-24242021-01-01980300110.1051/shsconf/20219803001shsconf_ec2020_03001Typology of schools operating in the Moscow Electronic School system based on the analysis of network indicatorsVachkova SvetlanaPetryaeva ElenaPatarakin EvgenyNetwork analysis methods are actively used to research the behavior of digital repository users who utilize and create digital objects. At the same time, the research into the collective behavior of a group of participants who are members of the same school is much less common. The library of the Moscow Electronic School is a rather complicated system with multiple roles offered to users. The actors of the repository are teachers, students, parents, and publishers – anyone performing any actions with the objects. In this study, the school is seen as an actor performing actions with objects – lesson scenarios within the Moscow Electronic School repository of digital objects. Within the study, the authors compare the sociograms of schools that unite teachers and the scenarios created by the teachers and divide schools into factions based on network indicators in sociograms. The main method of presenting and analyzing data is network analysis and sociogram creation. The authors identify two types of networks: the network of single participant’s relationships and the network of relationships of teachers from a single school. The authors not only describe the data structure in the Moscow Electronic School system that records the digital trace of every individual and collective user but also create a digital map that reflects the dynamics of actions in the Moscow Electronic School system and identify the indicators that characterize the common activity of key participants. Moreover, the authors identify graph factions for schools that characterize the degree of interaction between teachers: disconnected groups, sparse graphs, crystallization centers, dense graphs.https://www.shs-conferences.org/articles/shsconf/pdf/2021/09/shsconf_ec2020_03001.pdfdigital repositoryinteraction of teachersnetwork analysisdigital object
spellingShingle Vachkova Svetlana
Petryaeva Elena
Patarakin Evgeny
Typology of schools operating in the Moscow Electronic School system based on the analysis of network indicators
SHS Web of Conferences
digital repository
interaction of teachers
network analysis
digital object
title Typology of schools operating in the Moscow Electronic School system based on the analysis of network indicators
title_full Typology of schools operating in the Moscow Electronic School system based on the analysis of network indicators
title_fullStr Typology of schools operating in the Moscow Electronic School system based on the analysis of network indicators
title_full_unstemmed Typology of schools operating in the Moscow Electronic School system based on the analysis of network indicators
title_short Typology of schools operating in the Moscow Electronic School system based on the analysis of network indicators
title_sort typology of schools operating in the moscow electronic school system based on the analysis of network indicators
topic digital repository
interaction of teachers
network analysis
digital object
url https://www.shs-conferences.org/articles/shsconf/pdf/2021/09/shsconf_ec2020_03001.pdf
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AT petryaevaelena typologyofschoolsoperatinginthemoscowelectronicschoolsystembasedontheanalysisofnetworkindicators
AT patarakinevgeny typologyofschoolsoperatinginthemoscowelectronicschoolsystembasedontheanalysisofnetworkindicators