Fostering reflection through automatic feedback in MOOCs: a strategy leveraging on participants' Self-Regulated Learning skills
Conference Paper
Publication Date:
2019
abstract:
Formative assessment is regarded as one of the main challenges in MOOC research and practice.
While MOOC participants need formative assessment and feedback to self-regulate their own
learning, providing timely and personalised feedback to large cohorts of students poses issues in
terms of scalability and sustainability that require designers to work out technological solutions to
produce effective feedback. This paper puts forward a proposal for a type of feedback which is
particularly suited to assess non declarative knowledge, like critical thinking about a complex subject.
The feedback proposed relies on the power of comparison with peers' opinions and practice, and is
complementary to the most well-known technique of peer review, which requires some degree of
synchronicity between participants. The proposed feedback consists in visualising a table containing
the answers and behaviours of individual participants side-by-side to descriptive statistics of the
analogous data concerning the whole cohort. Quantitative and qualitative data were collected to
investigate self-reported usefulness and potential of the feedback. While usefulness was statistically
higher the mid-point of the scale, no significant difference was found when considering the nature of
data (answers to surveys vs actions carried out) as an independent variable. A few suggestions on
how to improve this feedback were also identified.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
automatic feedback
List of contributors:
Caruso, GIOVANNI PAOLO; Passarelli, Marcello; Pozzi, Francesca; Ceregini, Andrea; Persico, DONATELLA GIOVANNA; Manganello, Flavio; Dagnino, FRANCESCA MARIA
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