Using data mining for discovering relationships between collaboration skills and group roles

R. Costaguta, Germán Lescano, Pablo Santana Mansilla, Daniela Missio, Patricia Miro
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引用次数: 0

Abstract

Computer-Supported Collaborative Learning systems provide communication, coordination and collaboration tools that ease group dynamic regardless space-time location of group members. However, forming groups and having technology to support group tasks is not enough to guarantee students collaboration and the reaching of learning goals. Effective collaboration supposes the manifestation of specific roles by group members. Considering that group roles are conditioned (among others factors) by collaboration skills that students are able to manifest, it is necessary to discover non-explicit relationships between group roles and collaboration skills. In order to stablish this relationship data mining, in particular association rules, was applied to a set of interactions registered during online collaboration sessions where universitary students participated. Through associaton rules it was possible to discover relationships of Conversation and Active Learning collaboration skills with Monitor Evaluator, Coordinator, Resource Invesigator and Specialist group roles. The discoverd knowledge might be used for automatic recognition of student roles based on collaboration skills that students manifest in their groups. Furthermore, the discovered association rules could be used for group formation considering if group members have the skills related to the necessary roles for an adequate group dynamic.
使用数据挖掘来发现协作技能和团队角色之间的关系
计算机支持的协作学习系统提供了沟通、协调和协作工具,使小组动态变得容易,而不考虑小组成员的时空位置。然而,组建小组和拥有支持小组任务的技术并不足以保证学生的合作和学习目标的实现。有效的协作要求团队成员表现出特定的角色。考虑到群体角色是由学生能够表现出的协作技能所决定的(以及其他因素),有必要发现群体角色和协作技能之间的非显性关系。为了建立这种关系,数据挖掘,特别是关联规则,被应用于在大学生参与的在线协作会话期间注册的一组交互。通过关联规则,可以发现对话和主动学习协作技能与监督评估者、协调员、资源调查员和专家小组角色之间的关系。发现的知识可能用于基于学生在其小组中表现出的协作技能的学生角色的自动识别。此外,考虑到小组成员是否具有与适当的小组动态所需角色相关的技能,所发现的关联规则可用于小组形成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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