Understanding Idea Creation in Collaborative Discourse through Networks:
The Joint Attention-Interaction-Creation (AIC) Framework
- URL: http://arxiv.org/abs/2305.16262v1
- Date: Thu, 25 May 2023 17:18:19 GMT
- Title: Understanding Idea Creation in Collaborative Discourse through Networks:
The Joint Attention-Interaction-Creation (AIC) Framework
- Authors: Xinran Zhu, Bodong Chen
- Abstract summary: The Joint Attention-Interaction-Creation (AIC) framework captures important dynamics in collaborative discourse.
The framework was developed from the networked lens, informed by natural language processing techniques, and inspired by socio-semantic network analysis.
- Score: 0.42303492200814446
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: In Computer-Supported Collaborative Learning, ideas generated through
collaborative discourse are informative indicators of students' learning and
collaboration. Idea creation is a product of emergent and interactive
socio-cognitive endeavors. Therefore, analyzing ideas requires capturing
contextual information in addition to the ideas themselves. In this paper, we
propose the Joint Attention-Interaction-Creation (AIC) framework, which
captures important dynamics in collaborative discourse, from attention and
interaction to creation. The framework was developed from the networked lens,
informed by natural language processing techniques, and inspired by
socio-semantic network analysis. A case study was included to exemplify the
framework's application in classrooms and to illustrate its potential in
broader contexts.
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