赋予教师以人工智能:共同设计科学课堂个性化教学的学习分析工具

Tanya Nazaretsky, Carmel Bar, Michal Walter, Giora Alexandron
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引用次数: 13

摘要

人工智能教育技术旨在支持教师提供个性化教学,可以提高他们满足个别学生需求的能力,有望带来更好的学习效果。本文介绍了一项参与性研究的结果,该研究旨在与科学教师共同设计一种学习分析工具,帮助他们在混合学习环境中实施个性化教学法。开发过程包括三个阶段。首先,我们采访了一组教师,以确定个性化教学在哪里以及如何融入他们的教学实践。这就产生了基于聚类的个性化策略。接下来,我们设计了一个支持这一策略的学习分析工具的模型,并与另一组教师一起定义了一个“可解释的学习分析”方案,以一种既具有教学意义又可以自动生成的方式解释每个集群。第三,我们开发了一种支持这种“可解释集群”教学法的人工智能算法,并进行了一项对照实验,以评估其对教师计划个性化学习顺序的能力的贡献。计划的序列由专家以盲法评估,结果表明实验组-收到有解释的集群的教师-设计的序列解决了不同群体学生表现出的困难,比那些收到没有解释的集群的教师设计的序列更好。这项研究的主要贡献是双重的。首先,它提出了一种有效的个性化方法,适合科学课堂中的混合学习,它将实时聚类算法与可解释的人工智能方案相结合,该方案可以从项目级元数据(Q矩阵)自动构建具有教学意义的解释。其次,它展示了如何通过共同设计过程与教师一起构建这样一个端到端学习分析解决方案,并突出了教师为将其应用于当地环境而添加到系统提供的分析中的知识类型。作为一项实际贡献,这一过程为一种新的学习分析工具的设计提供了信息,该工具被集成到一个免费的在线学习平台中,该平台正在被1000多名科学教师使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empowering Teachers with AI: Co-Designing a Learning Analytics Tool for Personalized Instruction in the Science Classroom
AI-powered educational technology that is designed to support teachers in providing personalized instruction can enhance their ability to address the needs of individual students, hopefully leading to better learning gains. This paper presents results from a participatory research aimed at co-designing with science teachers a learning analytics tool that will assist them in implementing a personalized pedagogy in blended learning contexts. The development process included three stages. In the first, we interviewed a group of teachers to identify where and how personalized instruction may be integrated into their teaching practices. This yielded a clustering-based personalization strategy. Next, we designed a mock-up of a learning analytics tool that supports this strategy and worked with another group of teachers to define an ‘explainable learning analytics’ scheme that explains each cluster in a way that is both pedagogically meaningful and can be generated automatically. Third, we developed an AI algorithm that supports this ‘explainable clusters’ pedagogy and conducted a controlled experiment that evaluated its contribution to teachers’ ability to plan personalized learning sequences. The planned sequences were evaluated in a blinded fashion by an expert, and the results demonstrated that the experimental group – teachers who received the clusters with the explanations – designed sequences that addressed the difficulties exhibited by different groups of students better than those designed by teachers who received the clusters without explanations. The main contribution of this study is twofold. First, it presents an effective personalization approach that fits blended learning in the science classroom, which combines a real-time clustering algorithm with an explainable-AI scheme that can automatically build pedagogically meaningful explanations from item-level meta-data (Q Matrix). Second, it demonstrates how such an end-to-end learning analytics solution can be built with teachers through a co-design process and highlights the types of knowledge that teachers add to system-provided analytics in order to apply them to their local context. As a practical contribution, this process informed the design of a new learning analytics tool that was integrated into a free online learning platform that is being used by more than 1000 science teachers.
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