Siete vo vzdelávaní : možnosti využitia analýzy sociálnych sietí v pedagogickom výskume

Title: Siete vo vzdelávaní : možnosti využitia analýzy sociálnych sietí v pedagogickom výskume
Variant title:
  • Networks in education : making use of social network analysis in educational research
Source document: Studia paedagogica. 2020, vol. 25, iss. 3, pp. [153]-185
Extent
[153]-185
  • ISSN
    1803-7437 (print)
    2336-4521 (online)
Type: Article
Language
License: Not specified license
 

Notice: These citations are automatically created and might not follow citation rules properly.

Abstract(s)
Analýza sociálnych sietí si svojim širokým využitím nachádza miesto v množstve vedeckých odborov. V pedagogickom výskume má potenciál odhaliť a preskúmať doteraz neznáme usporiadania vzťahov medzi aktérmi vo vzdelávaní. Tento článok poskytuje úvod do problematiky, techník a využitia analýz y sociálnych sietí v pedagogickom výskume. V prvom rade predstavuje základnú terminológiu a koncepty analýz y sociálnych sietí. Na príklade malej siete ilustruje základné sieťové výpočty tak na úrovni jednotlivých aktérov, ako na úrovni celej siete. Článok ďalej poskytuje stručný prehľad štúdií z pedagogického výskumu, v ktorých bola analýza sociálnych sietí využitá. Hlavná časť článku na príklade fiktívnej triedy a piatich výskumných otázok ukazuje možnosti analýz y sociálnych sietí v pedagogickom výskume od základnej prierezovej analýz y po dynamickú inferenčnú analýzu. Krok za krokom sú predstavené rôzne metódy s následnou interpretáciou ich výsledkov. Okrem výpočtov centralít, klastrovacieho koeficientu a prepojenosti siete sú v príkladoch predstavené aj permutačné testy pri testovaní významnosti za využitia sieťových dát, ERGM (exponential random graph models) a STERGM (separable temporal exponential graph models). V neposlednom rade sú prediskutované problémy spojené s využitím analýz y sociálnych sietí.
With its wide range of applications, social network analysis has found its place in a number of scientific fields. In educational research, social network analysis has the potential to uncover and investigate yet unknown configurations of relationships among actors in education. This paper provides an introduction to the issues, techniques, and applications of social network analysis in educational research. It first surveys the basic terminolog y and concepts in social network analysis. Using the example of a small network, it demonstrates basic network calculations at the level of both the individual actors and the network as a whole. Furthermore, the paper provides a brief overview of studies in the field of educational research that have employed social network analysis. Using the example of a fictional classroom and five research questions, the main part of the paper demonstrates the application of social network analysis in educational research ranging from crosssectional descriptive analysis to dynamic inferential analysis. Step by step, it introduces a range of methods and interprets their results. In addition to centrality, clustering, and connectedness measures, the example contains permutation tests used for significance testing with network data, exponential random graph models (ERGM), and separable temporal exponential graph models (STERGM). Finally, the paper discusses challenges related to the application of social network analysis.
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