批判性(理论)数据扫盲:来自实地的故事

IF 1.6 Q2 INFORMATION SCIENCE & LIBRARY SCIENCE Information and Learning Sciences Pub Date : 2023-12-26 DOI:10.1108/ils-06-2023-0087
Annette Markham, Riccardo Pronzato
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引用次数: 0

摘要

目的 本文旨在探讨如何通过在课堂上测试不同的方法来促进批判性数字和数据素养,从而找到一个促进持续批判性素养的教学框架。 设计/方法/途径 本文借鉴了在丹麦、美国和意大利进行的一系列为期 10 年的批判性教学法实验,参与实验的有 1500 多名年轻人。多种方法的教学设计训练学生进行以自我为导向的引导式自述、情景分析、寓言制图和关键基础设施分析。 研究结果 引导式自我民族志技术可促进持续的数据素养,这种技术依赖于通过连续的提示进行多次迭代的自我分析,使学生围绕霸权数据和人工智能(AI)基础设施的生活体验,经历观察、批判性思考、批判性理论指导下的批判等阶段。 研究局限性/启示 数字/数据关键素养研究人员应继续测试建立持续批判的模式,这种模式不仅能促进行为的长期改变,还能促进公民社会科学的发展,即参与者与朋友和家人一起使用这些自述技术,对数据/人工智能基础设施的霸权力量建立本地相关的批判。 原创性/价值 所提出的扫盲模式采用了批判理论的立场,显示了在微观和宏观层面使用多种干预模式的价值,以促使学习者进行自我分析和元层面的反思。这一框架将批判理论置于教学法的中心,以激发更激进的立场,这被认为是推动学生从态度转变到行为转变的重要一步。
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A critical (theory) data literacy: tales from the field
Purpose This paper aims to explore how critical digital and data literacies are facilitated by testing different methods in the classroom, with the ambition to find a pedagogical framework for prompting sustained critical literacies. Design/methodology/approach This contribution draws on a 10-year set of critical pedagogy experiments conducted in Denmark, USA and Italy, and engaging more than 1,500 young adults. Multi-method pedagogical design trains students to conduct self-oriented guided autoethnography, situational analysis, allegorical mapping, and critical infrastructure analysis. Findings The techniques of guided autoethnography for facilitating sustained data literacy rely on inviting multiple iterations of self-analysis through sequential prompts, whereby students move through stages of observation, critical thinking, critical theory-informed critique around the lived experience of hegemonic data and artificial intelligence (AI) infrastructures. Research limitations/implications Critical digital/data literacy researchers should continue to test models for building sustained critique that not only facilitate changes in behavior over time but also facilitate citizen social science, whereby participants use these autoethnographic techniques with friends and families to build locally relevant critique of the hegemonic power of data/AI infrastructures. Originality/value The proposed literacy model adopts a critical theory stance and shows the value of using multiple modes of intervention at micro and macro levels to prompt self-analysis and meta-level reflexivity for learners. This framework places critical theory at the center of the pedagogy to spark more radical stances, which is contended to be an essential step in moving students from attitudinal change to behavioral change.
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来源期刊
Information and Learning Sciences
Information and Learning Sciences INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
9.50
自引率
2.90%
发文量
30
期刊介绍: Information and Learning Sciences advances inter-disciplinary research that explores scholarly intersections shared within 2 key fields: information science and the learning sciences / education sciences. The journal provides a publication venue for work that strengthens our scholarly understanding of human inquiry and learning phenomena, especially as they relate to design and uses of information and e-learning systems innovations.
期刊最新文献
A critical (theory) data literacy: tales from the field Toward a new framework for teaching algorithmic literacy Promoting students’ informal inferential reasoning through arts-integrated data literacy education The data awareness framework as part of data literacies in K-12 education Learning experience network analysis for design-based research
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