A Bayesian workflow for the analysis and reporting of international large-scale assessments: a case study using the OECD teaching and learning international survey

IF 2.6 Q1 EDUCATION & EDUCATIONAL RESEARCH
David Kaplan, Kjorte Harra
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引用次数: 0

Abstract

This paper aims to showcase the value of implementing a Bayesian framework to analyze and report results from international large-scale assessments and provide guidance to users who want to analyse ILSA data using this approach. The motivation for this paper stems from the recognition that Bayesian statistical inference is fast becoming a popular methodological framework for the analysis of educational data generally, and large-scale assessments more specifically. The paper argues that Bayesian statistical methods can provide a more nuanced analysis of results of policy relevance compared to standard frequentist approaches commonly found in large-scale assessment reports. The data utilized for this paper comes from the Teaching and Learning International Survey (TALIS). The paper provides steps in implementing a Bayesian analysis and proposes a workflow that can be applied not only to TALIS but to large-scale assessments in general. The paper closes with a discussion of other Bayesian approaches to international large-scale assessment data, in particularly for predictive modeling.

Abstract Image

用于分析和报告国际大规模评估的贝叶斯工作流程:利用经合组织国际教学调查进行的案例研究
本文旨在展示采用贝叶斯框架分析和报告国际大规模评估结果的价值,并为希望使用这种方法分析国际语言能力评估数据的用户提供指导。本文的动机源于人们认识到,贝叶斯统计推断法正迅速成为分析教育数据,特别是大规模评估的流行方法框架。本文认为,与大规模评估报告中常见的标准频繁主义方法相比,贝叶斯统计方法可以对具有政策相关性的结果进行更细致的分析。本文使用的数据来自国际教学调查(TALIS)。本文提供了实施贝叶斯分析的步骤,并提出了一个不仅适用于 TALIS,而且适用于一般大规模评估的工作流程。论文最后还讨论了国际大规模评估数据的其他贝叶斯方法,特别是预测建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Large-Scale Assessments in Education
Large-Scale Assessments in Education Social Sciences-Education
CiteScore
4.30
自引率
6.50%
发文量
16
审稿时长
13 weeks
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