评估大规模评估中分析性决策的效果:分析PISA数学2003-2012

IF 2.6 Q1 EDUCATION & EDUCATIONAL RESEARCH
Jörg-Henrik Heine, Alexander Robitzsch
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引用次数: 1

摘要

研究问题:本文探讨了在国际大规模评估中,不同的分析选择可能在多大程度上影响对具体国家的横截面和趋势估计的推断的首要问题。我们以2003年至2012年的4轮PISA数学能力评估数据为例进行研究。方法在数据的重新标度和分析中,考虑了四个关键的方法学因素作为分析选择:(1)选择在三个因素水平上不同的国家子样本进行项目校准。(2)项目样本指的是PISA中使用的两套数学项目。(3)项目校准使用的估计方法:R包TAM采用的边际极大似然估计法或R包成对采用的两两行平均法。(4)连接方式的类型:并行校准或连续链连接的单独校准。研究结果表明,分级的分析决策确实影响了PISA的结果。选择不同的校准样本、估计方法和连接方法等因素对具体国家的截面和趋势估计的影响往往很小。然而,不同链接项目的选择似乎对国家排名以及国家之间和国家内部的发展趋势具有决定性影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Evaluating the effects of analytical decisions in large-scale assessments: analyzing PISA mathematics 2003-2012

Evaluating the effects of analytical decisions in large-scale assessments: analyzing PISA mathematics 2003-2012

Research question

This paper examines the overarching question of to what extent different analytic choices may influence the inference about country-specific cross-sectional and trend estimates in international large-scale assessments. We take data from the assessment of PISA mathematics proficiency from the four rounds from 2003 to 2012 as a case study.

Methods

In particular, four key methodological factors are considered as analytical choices in the rescaling and analysis of the data: (1) The selection of country sub-samples for item calibration differing at three factor levels. (2) The item sample refering to two sets of mathematics items used within PISA. (3) The estimation method used for item calibration: marginal maximum likelihood estimation method as implemented in R package TAM or an pairwise row averaging approach as implemented in the R package pairwise. (4) The type of linking method: concurrent calibration or separate calibration with successive chain linking.

Findings

It turned out that analytical decisions for scaling did affect the PISA outcomes. The factors of choosing different calibration samples, estimation method and linking method tend to show only small effects on the country-specific cross-sectional and trend estimates. However, the selection of different link items seems to have a decisive influence on country ranking and development trends between and within countries.

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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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