Open PISA: Dashboard for Large Educational Dataset

Avner Kantor, S. Rafaeli
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引用次数: 2

Abstract

International Large-Scale Assessments (ILSA) have a critical role in shaping education systems around the world. They impact local and national education policy and receive much attention in the media and the public discourse. However, the public has limited access to the results and cannot learn from them. Subsequently, the media might frame the results incorrectly. The transparency of ILSA is essential to the advancement of the public discourse. It requires easy access to data together with simple analysis tools. However, the complexity of ILSA makes it hard to understand and to analyze. Open PISA tries to deal with this challenge by developing a dashboard for the Program for International Student Assessment (PISA). It aims to guide users in the analysis of the dataset. This paper describes the dashboard design and insight based on collected users' responses. It hypothesizes that full transparency of the PISA dataset might be not achievable to the entire public. Further research is needed to evaluate how dataset analysis affects users' knowledge and opinions.
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开放PISA:大型教育数据集的仪表盘
国际大规模评估(ILSA)在塑造世界各地的教育体系方面发挥着关键作用。它们影响着地方和国家的教育政策,受到媒体和公众话语的极大关注。然而,公众对结果的了解有限,无法从中吸取教训。随后,媒体可能会错误地描述结果。ILSA的透明度对公共话语的进步至关重要。它需要方便地访问数据以及简单的分析工具。然而,ILSA的复杂性使其难以理解和分析。Open PISA试图通过为国际学生评估项目(PISA)开发一个仪表盘来应对这一挑战。它旨在指导用户分析数据集。本文描述了基于收集到的用户反馈的仪表盘设计和洞察。它假设,对所有公众来说,PISA数据集的完全透明可能是无法实现的。需要进一步的研究来评估数据集分析如何影响用户的知识和意见。
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