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What is the Effect of a Dominant Code in an Epistemic Network Analysis?

  • Rafael Ferreira MelloEmail author
  • Dragan Gašević
Conference paper
Part of the Communications in Computer and Information Science book series (CCIS, volume 1112)

Abstract

This paper investigates how different configuration of epistemic network analysis parameters influence the examination of student interactions in asynchronous discussions in online learning environments. Specifically, the paper investigates strategies for dealing by unintended consequences of a dominant node in epistemic network analysis (ENA). In particular, the paper reports on a study that explored the effects of two different strategies including (i) the use of different dimensions calculated with singular value decomposition (SVD), and (ii) exclusion of a dominant code. Our results showed that the use of different SVDs did not change the influence of a dominant code in the graph. On the other hand, the exclusion of the dominant code led to an entirely different configuration in ENA. The practical implications of the results are further discussed.

Keywords

Epistemic network analysis Dominant code Graph analysis 

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Copyright information

© Springer Nature Switzerland AG 2019

Authors and Affiliations

  1. 1.Universidade Federal Rural de PernambucoRecifeBrazil
  2. 2.Monash UniversityClaytonAustralia

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