Suche

Wo soll gesucht werden?
Erweiterte Literatursuche

Ariadne Pfad:

Inhalt

Literaturnachweis - Detailanzeige

 
Autor/inn/enKaplan, David; Chen, Jianschen; Yavuz, Sinan; Lyu, Weicong
TitelBayesian Dynamic Borrowing of Historical Information with Applications to the Analysis of Large-Scale Assessments
Quelle(2022), (30 Seiten)
PDF als Volltext (1); PDF als Volltext kostenfreie Datei (2) Verfügbarkeit 
ZusatzinformationORCID (Kaplan, David)
ORCID (Chen, Jianschen)
ORCID (Yavuz, Sinan)
ORCID (Lyu, Weicong)
Weitere Informationen
Spracheenglisch
Dokumenttypgedruckt; online; Monographie
SchlagwörterBayesian Statistics; Models; Prediction; Accuracy; Achievement Tests; Foreign Countries; International Assessment; Secondary School Students; Data Analysis; Program for International Student Assessment
AbstractThe purpose of this paper is to demonstrate and evaluate the use of "Bayesian dynamic borrowing"(Viele et al, in Pharm Stat 13:41-54, 2014) as a means of systematically utilizing historical information with specific applications to large-scale educational assessments. Dynamic borrowing via Bayesian hierarchical models is a special case of a general framework of historical borrowing where the degree of borrowing depends on the heterogeneity among historical data and current data. A joint prior distribution over the historical and current data sets is specified with the degree of heterogeneity across the data sets controlled by the variance of the joint distribution. We apply Bayesian dynamic borrowing to both single-level and multilevel models and compare this approach to other historical borrowing methods such as complete pooling, Bayesian synthesis, and power priors. Two case studies using data from the Program for International Student Assessment reveal the utility of Bayesian dynamic borrowing in terms of predictive accuracy. This is followed by two simulation studies that reveal the utility of Bayesian dynamic borrowing over simple pooling and power priors in cases where the historical data is heterogeneous compared to the current data based on bias, mean squared error, and predictive accuracy. In cases of homogeneous historical data, Bayesian dynamic borrowing performs similarly to data pooling, Bayesian synthesis, and power priors. In contrast, for heterogeneous historical data, Bayesian dynamic borrowing performed at least as well, if not better, than other methods of borrowing with respect to mean squared error, percent bias, and leave-one-out cross-validation. [This is the online version of an article published in Psychometrika.] (As Provided).
Erfasst vonERIC (Education Resources Information Center), Washington, DC
Update2024/1/01
Literaturbeschaffung und Bestandsnachweise in Bibliotheken prüfen
 

Standortunabhängige Dienste
Da keine ISBN zur Verfügung steht, konnte leider kein (weiterer) URL generiert werden.
Bitte rufen Sie die Eingabemaske des Karlsruher Virtuellen Katalogs (KVK) auf
Dort haben Sie die Möglichkeit, in zahlreichen Bibliothekskatalogen selbst zu recherchieren.
Tipps zum Auffinden elektronischer Volltexte im Video-Tutorial

Trefferlisten Einstellungen

Permalink als QR-Code

Permalink als QR-Code

Inhalt auf sozialen Plattformen teilen (nur vorhanden, wenn Javascript eingeschaltet ist)

Teile diese Seite: