Multi agent model for skills training of CSCL e-tutors: modelo multi agente para el entrenamiento de habilidades de e-tutores de ACSC

P. Mansilla, R. Costaguta, S. Schiaffino
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引用次数: 3

Abstract

Computer Supported Collaborative Learning (CSCL) systems enable not only group learning with independence of the time and space where group members are located, but also they are favorable environments for leadership skills development. However, as interactions that are ideal for learning do not occur spontaneously, participation of e-tutors (teachers) is essential in order to generate interactions that contribute to collaborative building of knowledge. Considering e-tutors of CSCL usually do not know the most effective way to assist students, this article proposes a multi agent model (combining techniques from natural language processing, text mining, and machine learning) that can be used for personalized training of e-tutors. In the proposed model an intelligent agent analyzes group interactions to identify conflicts which resolution needs e-tutors' intervention. In these cases, a training agent suggests to e-tutors necessary actions so as they solve conflicts and simultaneously they develop skills they do not manifest properly. The multi agent model will be implemented in a CSCL environment and its operation will be evaluated through experiments with university students and teachers.
CSCL e-tutor技能培训多agent模型:ACSC e-tutor技能培训多agent模型
计算机支持的协同学习(CSCL)系统不仅可以使小组学习独立于小组成员所在的时间和空间,而且是培养领导技能的良好环境。然而,由于理想的学习互动不会自发发生,因此电子导师(教师)的参与对于产生有助于协作构建知识的互动至关重要。考虑到CSCL的电子导师通常不知道如何最有效地帮助学生,本文提出了一个多智能体模型(结合自然语言处理、文本挖掘和机器学习技术),可以用于电子导师的个性化培训。在该模型中,智能代理通过分析群体互动来识别需要导师干预的冲突。在这些情况下,培训代理会建议电子导师采取必要的行动,以便他们解决冲突,同时发展他们没有适当表现出来的技能。多智能体模型将在CSCL环境中实施,并通过大学生和教师的实验来评估其运行情况。
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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