首页> 外文期刊>International Journal of Artificial Intelligence Tools: Architectures, Languages, Algorithms >A DOMAIN-INDEPENDENT, TRANSFERABLE AND TIMELY ANALYSIS APPROACH TO ASSESS STUDENT COLLABORATION
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A DOMAIN-INDEPENDENT, TRANSFERABLE AND TIMELY ANALYSIS APPROACH TO ASSESS STUDENT COLLABORATION

机译:一种用于评估学生协作的领域独立,可转移且及时的分析方法

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摘要

Collaborative learning environments require intensive, regular and frequent analysis of the increasing amount of interaction data generated by students to assess that collaborative learning takes place. To support timely assessments that may benefit students and teachers the method of analysis must provide meaningful evaluations while the interactions take place. This research proposes machine learning-based techniques to infer the relationship between student collaboration and some quantitative domain-independent statistical indicators derived from large-scale evaluation analysis of student interactions. This paper (i) compares a set of metrics to identify the most suitable to assess student collaboration, (ii) reports on student evaluations of the metacognitive tools that display collaboration assessments from a new collaborative learning experience and (iii) extends previous findings to clarify modeling and usage issues. The advantages of the approach are: (1) it is based on domain-independent and generally observable features, (2) it provides regular and frequent data mining analysis with minimal teacher or student intervention, thereby supporting metacognition for the learners and corrective actions for the teachers, and (3) it can be easily transferred to other e-learning environments and include transferability features that are intended to facilitate its usage in other collaborative and social learning tools.
机译:协作学习环境需要对学生生成的不断增长的交互数据进行深入,定期和频繁的分析,以评估协作学习的发生。为了支持可能有益于学生和老师的及时评估,分析方法必须在互动发生时提供有意义的评估。这项研究提出了一种基于机器学习的技术,以推断学生协作与一些定量的独立于域的统计指标之间的关系,这些统计指标源自对学生互动的大规模评估分析。本文(i)比较了一组指标,以确定最适合评估学生协作的指标;(ii)关于元认知工具的学生评估的报告,这些元认知工具显示了来自新的协作学习经验的协作评估;(iii)扩展了以前的发现以澄清建模和使用问题。该方法的优点是:(1)基于独立于领域且通常可观察的特征;(2)提供常规和频繁的数据挖掘分析,而教师或学生的干预最少,从而支持学习者的元认知和针对学生的纠正措施(3)可以轻松地将其转移到其他电子学习环境中,并且包括旨在促进其在其他协作和社交学习工具中使用的可转移性功能。

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