University Politehnica of Bucharest, Bucharest, Romania.
Arizona State University, Tempe, AZ, USA.
Behav Res Methods. 2018 Apr;50(2):604-619. doi: 10.3758/s13428-017-0888-4.
The broad use of computer-supported collaborative-learning (CSCL) environments (e.g., instant messenger-chats, forums, blogs in online communities, and massive open online courses) calls for automated tools to support tutors in the time-consuming process of analyzing collaborative conversations. In this article, the authors propose and validate the cohesion network analysis (CNA) model, housed within the ReaderBench platform. CNA, grounded in theories of cohesion, dialogism, and polyphony, is similar to social network analysis (SNA), but it also considers text content and discourse structure and, uniquely, uses automated cohesion indices to generate the underlying discourse representation. Thus, CNA enhances the power of SNA by explicitly considering semantic cohesion while modeling interactions between participants. The primary purpose of this article is to describe CNA analysis and to provide a proof of concept, by using ten chat conversations in which multiple participants debated the advantages of CSCL technologies. Each participant's contributions were human-scored on the basis of their relevance in terms of covering the central concepts of the conversation. SNA metrics, applied to the CNA sociogram, were then used to assess the quality of each member's degree of participation. The results revealed that the CNA indices were strongly correlated to the human evaluations of the conversations. Furthermore, a stepwise regression analysis indicated that the CNA indices collectively predicted 54% of the variance in the human ratings of participation. The results provide promising support for the use of automated computational assessments of collaborative participation and of individuals' degrees of active involvement in CSCL environments.
计算机支持的协作学习 (CSCL) 环境(例如即时通讯聊天、论坛、在线社区中的博客和大规模开放在线课程)的广泛使用需要自动化工具来支持导师完成分析协作对话这一耗时的过程。在本文中,作者提出并验证了 ReaderBench 平台中的凝聚力网络分析 (CNA) 模型。CNA 基于衔接、对话和复调理论,与社会网络分析 (SNA) 相似,但它也考虑文本内容和话语结构,并且独特地使用自动化衔接指标来生成潜在的话语表示。因此,CNA 通过在建模参与者之间的交互时明确考虑语义衔接,增强了 SNA 的能力。本文的主要目的是描述 CNA 分析,并通过使用十个参与者就 CSCL 技术的优势进行辩论的聊天对话来提供概念验证。每个参与者的贡献都是根据他们在涵盖对话核心概念方面的相关性进行人工评分的。然后,将 SNA 指标应用于 CNA 社会图,以评估每个成员参与程度的质量。结果表明,CNA 指标与对话的人工评估高度相关。此外,逐步回归分析表明,CNA 指数共同预测了人类对参与度评分的 54%的方差。结果为使用自动化计算评估协作参与度以及个体在 CSCL 环境中的积极参与程度提供了有希望的支持。