Assessment Innovation in Higher Education by Integrating Learning Analytics

Samaa Haniya, A. Tzirides, K. Georgiadou, M. Montebello, M. Kalantzis, B. Cope
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引用次数: 4

Abstract

With the rise of social networking sites and the arrival of an open education era characterized by Massive Open Online Courses MOOCs, learning is undergoing a paradigm shift which requires new assessment strategies. The boundaries between what we know, how we know it and the ways we assess and evaluate knowledge in formal and informal settings are now blurred [1], [2]. In these environments, students often interact with one another to produce and reproduce knowledge and transfer it into a new context to reach a mastery level of learning [3]. The massive amount of data being generated by learners makes it easier to assess performance than ever before [4], [5]. Every learner action is logged and factored in as a source of evidence to contribute to the overall learner assessment both from a summative perspective, and also in a formative way where immediate feedback is actionable. The integration of learning analytics tools and machine learning techniques can facilitate the process of assessment. In this paper we present a case study to show how the integration of learning analytics benefited learners and improved their performance in an online educational course at the University of Illinois Urbana-Champaign, while also holding them accountable for their own learning. The study utilized a survey method for data collection and quantitative and qualitative data analysis to interpret learners’ experiences after taking the course. 
整合学习分析的高等教育评估创新
随着社交网站的兴起和以大规模在线开放课程(MOOCs)为代表的开放教育时代的到来,学习正在经历范式转变,这需要新的评估策略。我们知道什么,我们如何知道,以及我们在正式和非正式场合评估知识的方式之间的界限现在已经模糊了。在这些环境中,学生经常相互交流,产生和复制知识,并将其转移到新的环境中,以达到掌握学习bbb的水平。学习者产生的大量数据使得评估表现比以往任何时候都更容易。每一个学习者的行动都被记录下来,并作为一个证据来源,从总结性的角度,也以一种形成的方式,即时反馈是可操作的,为学习者的整体评估做出贡献。学习分析工具和机器学习技术的集成可以促进评估过程。在本文中,我们提出了一个案例研究,以展示学习分析的整合如何使学习者受益,并在伊利诺伊大学厄巴纳-香槟分校的在线教育课程中提高了他们的表现,同时也让他们对自己的学习负责。本研究采用问卷调查的方法收集资料,并结合定量与定性的数据分析来解读学习者的学习体验。
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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