Literature DB >> 17804897

The computation of equating errors in international surveys in education.

Christian Monseur1, Alla Berezner.   

Abstract

Since the IEA's Third International Mathematics and Science Study, one of the major objectives of international surveys in education has been to report trends in achievement. The names of the two current IEA surveys reflect this growing interest: Trends in International Mathematics and Science Study (TIMSS) and Progress in International Reading Literacy Study (PIRLS). Similarly a central concern of the OECD's PISA is with trends in outcomes over time. To facilitate trend analyses these studies link their tests using common item equating in conjunction with item response modelling methods. IEA and PISA policies differ in terms of reporting the error associated with trends. In IEA surveys, the standard errors of the trend estimates do not include the uncertainty associated with the linking step while PISA does include a linking error component in the standard errors of trend estimates. In other words, PISA implicitly acknowledges that trend estimates partly depend on the selected common items, while the IEA's surveys do not recognise this source of error. Failing to recognise the linking error leads to an underestimation of the standard errors and thus increases the Type I error rate, thereby resulting in reporting of significant changes in achievement when in fact these are not significant. The growing interest of policy makers in trend indicators and the impact of the evaluation of educational reforms appear to be incompatible with such underestimation. However, the procedure implemented by PISA raises a few issues about the underlying assumptions for the computation of the equating error. After a brief introduction, this paper will describe the procedure PISA implemented to compute the linking error. The underlying assumptions of this procedure will then be discussed. Finally an alternative method based on replication techniques will be presented, based on a simulation study and then applied to the PISA 2000 data.

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Year:  2007        PMID: 17804897

Source DB:  PubMed          Journal:  J Appl Meas        ISSN: 1529-7713


  3 in total

1.  Reanalysis of the German PISA Data: A Comparison of Different Approaches for Trend Estimation With a Particular Emphasis on Mode Effects.

Authors:  Alexander Robitzsch; Oliver Lüdtke; Frank Goldhammer; Ulf Kroehne; Olaf Köller
Journal:  Front Psychol       Date:  2020-05-26

2.  Exploring the Multiverse of Analytical Decisions in Scaling Educational Large-Scale Assessment Data: A Specification Curve Analysis for PISA 2018 Mathematics Data.

Authors:  Alexander Robitzsch
Journal:  Eur J Investig Health Psychol Educ       Date:  2022-07-07

3.  Accuracy of performance-test linking based on a many-facet Rasch model.

Authors:  Masaki Uto
Journal:  Behav Res Methods       Date:  2020-11-09
  3 in total

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