数据扫盲的背景、语言和技术

Kelsey E. Schenck, R. Duschl
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摘要

在数据日益驱动的社会中,将数据素养纳入 K-12 教育势在必行。数据素养的概念是一种跨学科能力,它超越了传统的统计理解,包括获取、分析、解释和有效交流从数据中获得的见解的技能。本文主张转变教育方法的范式,提倡采用基于情境和探究的方法,而不是传统的形式主义至上的方法。这种转变对于提高学生在现实世界中应用数据素养技能的能力至关重要。文章讨论了形式主义至上教学方法的局限性,强调了这种方法可能会限制学生对理论知识的实际应用。相比之下,文章提倡探究驱动的教育策略,如基于项目和问题的学习,以促进学生更深入地参与和理解数据素养。这些策略可以更有效地将理论概念与学生的生活经验和实际应用联系起来。此外,本文还认为,数据素养应被定义为语言。数据素养学习进度的设计者应借鉴数学和科学领域的实例和研究,让学生理解从数据到证据,再到模型和解释的转化过程。此外,文章还探讨了将技术融入数据素养教育的问题。文章强调了数字工具和平台在促进复杂数据集的互动和实践体验、丰富学习过程以及帮助学生为迎接数字时代的挑战做好准备方面的作用。最后,文章呼吁在技术强化学习环境的支持下,采用全面的跨学科方法开展数据扫盲教育。这种方法对于培养数据操作的技术技能以及数据评估和解释的批判性思维方式至关重要,从而培养出负责任的、有数据素养的公民,能够在数据丰富的世界中做出明智的决策。
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Context, language, and technology in data literacy
Integrating data literacy into K-12 education in an increasingly data-driven society is imperative. Data literacy is conceptualized as an interdisciplinary competence that extends beyond traditional statistical understanding, encompassing skills in accessing, analyzing, interpreting, and effectively communicating insights derived from data. The paper argues for a paradigm shift in educational approaches, advocating for incorporating contextual, inquiry-based methodologies over the traditional formalisms-first approach. This shift is essential for enhancing students' ability to apply data literacy skills in real-world contexts. The limitations of a formalisms-first pedagogical approach are discussed, highlighting its potential to restrict students' practical application of theoretical knowledge. In contrast, the article advocates for inquiry-driven educational strategies like project-based and problem-based learning to foster deeper engagement and understanding of data literacy. These strategies may be more effective in connecting theoretical concepts with students' lived experiences and real-world applications. Additionally, the paper argues that data literacy should be framed as language. Designers of data literacy learning progressions should draw on examples from mathematics and science domains and research to build students' understanding of the transformation processes from data to evidence and subsequently to models and explanations. Further, the article explores the integration of technology in data literacy education. It underscores the role of digital tools and platforms in facilitating interactive, hands-on experiences with complex data sets, enriching the learning process, and preparing students for the challenges of the digital era. In conclusion, the article calls for a comprehensive, interdisciplinary approach to data literacy education underpinned by technology-enhanced learning environments. This approach is essential for developing both the technical skills for data manipulation and a critical mindset for data evaluation and interpretation, thereby cultivating a responsible, data-literate citizenry capable of informed decision-making in a data-rich world.
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