Sources of Evidence-of-Learning: Learning and assessment in the era of big data

Q1 Arts and Humanities
B. Cope, M. Kalantzis
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引用次数: 21

Abstract

Abstract This article sets out to explore a shift in the sources of evidence-of-learning in the era of networked computing. One of the key features of recent developments has been popularly characterized as ‘big data'. We begin by examining, in general terms, the frame of reference of contemporary debates on machine intelligence and the role of machines in supporting and extending human intelligence. We go on to explore three kinds of application of computers to the task of providing evidence-of-learning to students and teachers: (1) the mechanization of tests—for instance, computer adaptive testing, and automated essay grading; (2) data mining of unstructured data—for instance, the texts of student interaction with digital artifacts, textual interactions with each other, and body sensors; (3) the design and analysis of mechanisms for the collection and analysis of structured data embedded within the learning process—for instance, in learning management systems, intelligent tutors, and simulations. A consequence of each and all of these developments is the potential to record and analyze the ‘big data' that is generated. The article presents both an optimistic view of what may be possible as these technologies and pedagogies evolve, while offering cautionary warnings about associated dangers.
学习证据的来源:大数据时代的学习与评估
摘要本文旨在探讨网络计算时代学习证据来源的转变。最近发展的一个关键特征被普遍描述为“大数据”。我们首先从一般意义上考察当代关于机器智能的辩论的参考框架,以及机器在支持和扩展人类智能方面的作用。我们继续探讨计算机在向学生和教师提供学习证据的任务中的三种应用:(1)测试的机械化-例如,计算机自适应测试和自动论文评分;(2)非结构化数据的数据挖掘——例如,学生与数字文物交互的文本,文本之间的交互,以及身体传感器;(3)设计和分析学习过程中嵌入的结构化数据的收集和分析机制,例如,在学习管理系统、智能导师和模拟中。所有这些发展的结果是记录和分析产生的“大数据”的潜力。随着这些技术和教学方法的发展,这篇文章对可能发生的事情提出了乐观的看法,同时对相关的危险提出了警告。
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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来源期刊
Open Review of Educational Research
Open Review of Educational Research EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
2.60
自引率
0.00%
发文量
0
审稿时长
22 weeks
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