填补K-12数据素养能力评估的空白:问卷的设计和初步验证

IF 4.9 Q1 PSYCHOLOGY, EXPERIMENTAL
Belén Donate-Beby , Francisco José García-Peñalvo , Daniel Amo-Filva , Sofía Aguayo-Mauri
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引用次数: 0

摘要

随着人工智能技术在教育中的整合不断发展,数据素养已成为教育工作者的一项关键能力,塑造了他们驾驭和利用大量教育数据的能力。本研究详细介绍了教育者数据素养自我评估(EDLSA)的发展,这是一份旨在评估K-12教师感知数据素养的问卷,重点关注其行为含义。EDLSA的发展是严谨的。它包括对框架进行详尽的定性审查,并在教师西班牙语样本中进行试点测试(n = 66),为改进该工具提供了相关见解。最后,我们进行了全面的统计分析,证实了该工具在测量教师数据管理能力方面的稳健信度(α = 0.976)。在小学和中学教育试点样本中的析因分析结果导致提出的维度重新调整为三类:综合教育分析,通过数据解决教育问题,以及通过数据和伦理影响促进元学习学生。基于评估的能力,EDLSA工具提供了对教育环境中数据的人机交互的全面理解。总的来说,这个自我评估工具呈现出强大的心理测量特性和框架定义,为教师和研究人员的进一步发展铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Filling the gap in K-12 data literacy competence assessment: Design and initial validation of a questionnaire
As the integration of AI-powered technologies in education grows, data literacy has become a key competence for educators, shaping their ability to navigate and utilize vast amounts of educational data. This study details the development of the Educators Data Literacy Self-Assessment (EDLSA), a questionnaire designed to assess perceived data literacy among K-12 teachers, focusing on its behavioural implications. The development of the EDLSA was rigorous. It involved an exhaustive qualitative review of frameworks and a pilot test in a teachers' Spanish sample (n = 66) provided relevant insights for refining the instrument. Finally, we conducted a comprehensive statistical analysis, which confirmed the instrument's robust reliability (α = 0.976) in measuring teachers' data management competence. The results of the factorial analysis in piloting primary and secondary education samples led to the readjustment of the proposed dimensions into three categories: comprehensive educational analytics, educational problem-solving through data, and promoting meta-learning students through data and ethical implications. Stemmed from the assessed competencies, the EDLSA instrument provides a comprehensive understanding of the human-computer interaction over data in educational settings. Overall, this self-assessment tool presents robust psychometric properties and a framework definition that paves the way for further development among teachers and researchers.
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