Using learner trace data to understand metacognitive processes in writing from multiple sources
Publication year
2022Author(s)
Publisher
New York, NY : Association for Computing Machinery (ACM)
ISBN
9781450395731
In
LAK22: 12th International Learning Analytics and Knowledge Conference, pp. 130-141Annotation
LAK22: 12th International Learning Analytics and Knowledge Conference (Online, USA, March 21-25, 2022)
Publication type
Article in monograph or in proceedings
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Organization
SW OZ BSI OLO
Languages used
English (eng)
Book title
LAK22: 12th International Learning Analytics and Knowledge Conference
Page start
p. 130
Page end
p. 141
Subject
Learning and PlasticityAbstract
Writing from multiple sources is a commonly administered learning task across educational levels and disciplines. In this task, learners are instructed to comprehend information from source documents and integrate it into a coherent written composition to fulfil the assignment requirements. Even though educationally potent, multi-source writing tasks are considered challenging to many learners, in particular because many learners underuse monitoring and control, critical metacognitive processes for productive engagement in multi-source writing. To understand these processes, we conducted a laboratory study involving 44 university students. They engaged in multi-source writing task hosted in digital learning environment. Adding to previous research, we unobtrusively measured metacognitive processes using learners’ trace data collected via multiple data channels and in both writing and reading space of the multi-source writing task. We further investigated how these processes affect the quality of a written product, i.e., essay score. In the analysis, we utilised both automatically and human-generated essay score. The rating performance of the essay scoring algorithm was comparable to that of human raters. Our results largely support the theoretical assumptions that engagement in metacognitive monitoring and control benefits the quality of written product. Moreover, our results can inform the development of analytics-based tools that support student writing by making use of trace data and automated essay scoring.
This item appears in the following Collection(s)
- Academic publications [244262]
- Electronic publications [131202]
- Faculty of Social Sciences [30036]
- Open Access publications [105228]
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