Rahmenprogramm des BMBF zur Förderung der empirischen Bildungsforschung

Literaturdatenbank

Vollanzeige

    Pfeil auf den Link... Verfügbarkeit 
Autoren Zinn, Sabine; Gnambs, Timo  
Titel Modeling competence development in the presence of selection bias.  
URL https://doi.org/10.3758/s13428-018-1021-z  
Erscheinungsjahr 2018, Jg. 50, H. 6  
Seitenzahl S. 2426-2441  
Zeitschrift Behavior research methods  
ISSN 0743-3808; 1554-3528  
Dokumenttyp Zeitschriftenaufsatz; online  
Beigaben Literaturangaben; Abbildungen; Tabellen  
Sprache englisch  
Forschungsschwerpunkt Bildungspanel (NEPS)  
Schlagwörter Längsschnittuntersuchung; Vergleichsuntersuchung; Vorurteil; Mathematische Kompetenz; Analyse; Kompetenzentwicklung; Statistische Methode; NEPS (National Educational Panel Study)  
Abstract A major challenge for representative longitudinal studies is panel attrition, because some respondents refuse to continue participating across all measurement waves. Depending on the nature of this selection process, statistical inferences based on the observed sample can be biased. Therefore, statistical analyses need to consider a missing-data mechanism. Because each missing-data model hinges on frequently untestable assumptions, sensitivity analyses are indispensable to gauging the robustness of statistical inferences. This article highlights contemporary approaches for applied researchers to acknowledge missing data in longitudinal, multilevel modeling and shows how sensitivity analyses can guide their interpretation. Using a representative sample of N = 13,417 German students, the development of mathematical competence across three years was examined by contrasting seven missing-data models, including listwise deletion, full-information maximum likelihood estimation, inverse probability weighting, multiple imputation, selection models, and pattern mixture models. These analyses identified strong selection effects related to various individual and context factors. Comparative analyses revealed that inverse probability weighting performed rather poorly in growth curve modeling. Moreover, school-specific effects should be acknowledged in missing-data models for educational data. Finally, we demonstrated how sensitivity analyses can be used to gauge the robustness of the identified effects. (Orig.).  
Förderkennzeichen 01GJ0888