Autoethnography as an authentic learning activity in online doctoral education : An integrated approach to authentic learning

Lee, Kyungmee (2020) Autoethnography as an authentic learning activity in online doctoral education : An integrated approach to authentic learning. TechTrends, 64. 570–580. ISSN 8756-3894

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Abstract

Under the constructivist learning paradigm, which emphasises authenticity as a required condition for learning, distance educators have been striving to create authentic learning environments that reflect the real world. However, it is inevitably challenging to make an online learning environment authentic for learners when it is ultimately separated from their real-life contexts. Particularly, in online doctoral education, given the diversity among online learners, even defining “what is real and to whom” is a difficult task. This paper argues that the epistemological approach to authentic learning, based on the constructivist learning paradigm, is not sufficient to make online learning “authentically” meaningful. The paper introduces an alternative, ontological approach stemming from the transformative learning paradigm, and suggests autoethnography as one authentic learning activity that can effectively integrate the epistemological and ontological approaches to authentic learning in online doctoral education. Such a comprehensive conceptualisation of authentic learning, as an integrated process of both knowing and becoming, allows each doctoral student to become a more authentic self across their learning and living environments.

Item Type:
Journal Article
Journal or Publication Title:
TechTrends
Uncontrolled Keywords:
/dk/atira/pure/subjectarea/asjc/1700/1701
Subjects:
?? computer science (miscellaneous) ??
ID Code:
143342
Deposited By:
Deposited On:
17 Apr 2020 09:35
Refereed?:
Yes
Published?:
Published
Last Modified:
21 Sep 2024 01:04