Assessing the Learning of Machine Learning in K-12: A Ten-Year Systematic Mapping

IF 2.1 Q1 EDUCATION & EDUCATIONAL RESEARCH
Marcelo Fernando Rauber, Christiane Gresse von Wangenheim
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引用次数: 6

Abstract

Although Machine Learning (ML) has already become part of our daily lives, few are familiar with this technology. Thus, in order to help students to understand ML, its potential, and limitations and to empower them to become creators of intelligent solutions, diverse courses for teaching ML in K-12 have emerged. Yet, a question less considered is how to assess the learning of ML. Therefore, we performed a systematic mapping identifying 27 instructional units, which also present a quantitative assessment of the students’ learning. The simplest assessments range from quizzes to performance-based assessments assessing the learning of basic ML concepts, approaches, and in some cases ethical issues and the impact of ML on lower cognitive levels. Feedback is mostly limited to the indication of the correctness of the answers and only a few assessments are automated. These results indicate a need for more rigorous and comprehensive research in this area.
评估K-12中机器学习的学习:一个十年的系统映射
虽然机器学习(ML)已经成为我们日常生活的一部分,但很少有人熟悉这项技术。因此,为了帮助学生理解ML,它的潜力和局限性,并使他们成为智能解决方案的创造者,在K-12中出现了各种ML教学课程。然而,一个较少考虑的问题是如何评估机器学习的学习。因此,我们进行了系统的映射,确定了27个教学单元,这些单元也对学生的学习进行了定量评估。最简单的评估范围从测验到基于性能的评估,评估基本ML概念、方法的学习,在某些情况下,还包括道德问题和ML对较低认知水平的影响。反馈主要局限于指出答案的正确性,只有少数评估是自动化的。这些结果表明,需要在这一领域进行更严格和全面的研究。
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来源期刊
Informatics in Education
Informatics in Education EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
6.10
自引率
3.70%
发文量
20
审稿时长
20 weeks
期刊介绍: INFORMATICS IN EDUCATION publishes original articles about theoretical, experimental and methodological studies in the fields of informatics (computer science) education and educational applications of information technology, ranging from primary to tertiary education. Multidisciplinary research studies that enhance our understanding of how theoretical and technological innovations translate into educational practice are most welcome. We are particularly interested in work at boundaries, both the boundaries of informatics and of education. The topics covered by INFORMATICS IN EDUCATION will range across diverse aspects of informatics (computer science) education research including: empirical studies, including composing different approaches to teach various subjects, studying availability of various concepts at a given age, measuring knowledge transfer and skills developed, addressing gender issues, etc. statistical research on big data related to informatics (computer science) activities including e.g. research on assessment, online teaching, competitions, etc. educational engineering focusing mainly on developing high quality original teaching sequences of different informatics (computer science) topics that offer new, successful ways for knowledge transfer and development of computational thinking machine learning of student''s behavior including the use of information technology to observe students in the learning process and discovering clusters of their working design and evaluation of educational tools that apply information technology in novel ways.
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