Predicting school transition rates in Austria with classification trees

Möller AC, George AC, Gross J (2022)
International Journal of Research & Method in Education .

Zeitschriftenaufsatz | E-Veröff. vor dem Druck | Englisch
 
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Autor*in
Möller, Annette ChristineUniBi ; George, Ann Cathrice; Gross, Juergen
Abstract / Bemerkung
Methods based on machine learning have become increasingly popular in many areas as they allow models to be fitted in a highly-data driven fashion and often show comparable or even increased performance in comparison to classical methods. However, in the area of educational sciences, the application of machine learning is still quite uncommon. This work investigates the benefit of using classification trees for analysing data from educational sciences. An application to data on school transition rates in Austria indicates different aspects of interest in the context of educational sciences: (i) the trees select variables for predicting school transition rates in a data-driven fashion which are well in accordance with existing confirmatory theories from educational sciences, (ii) trees can be employed for performing variable selection for regression models, and (iii) the classification performance of trees is comparable to that of binary regression models. These results indicate that trees and possibly other machine-learning methods may also be helpful to explore high-dimensional educational data sets, especially where no confirmatory theories have been developed yet.
Stichworte
Regression and classification trees; school transition; variable; selection and importance; multilevel structure of data; large-scale; assessment
Erscheinungsjahr
2022
Zeitschriftentitel
International Journal of Research & Method in Education
ISSN
1743-727X
eISSN
1743-7288
Page URI
https://pub.uni-bielefeld.de/record/2966732

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Möller AC, George AC, Gross J. Predicting school transition rates in Austria with classification trees. International Journal of Research & Method in Education . 2022.
Möller, A. C., George, A. C., & Gross, J. (2022). Predicting school transition rates in Austria with classification trees. International Journal of Research & Method in Education . https://doi.org/10.1080/1743727X.2022.2128744
Möller, Annette Christine, George, Ann Cathrice, and Gross, Juergen. 2022. “Predicting school transition rates in Austria with classification trees”. International Journal of Research & Method in Education .
Möller, A. C., George, A. C., and Gross, J. (2022). Predicting school transition rates in Austria with classification trees. International Journal of Research & Method in Education .
Möller, A.C., George, A.C., & Gross, J., 2022. Predicting school transition rates in Austria with classification trees. International Journal of Research & Method in Education .
A.C. Möller, A.C. George, and J. Gross, “Predicting school transition rates in Austria with classification trees”, International Journal of Research & Method in Education , 2022.
Möller, A.C., George, A.C., Gross, J.: Predicting school transition rates in Austria with classification trees. International Journal of Research & Method in Education . (2022).
Möller, Annette Christine, George, Ann Cathrice, and Gross, Juergen. “Predicting school transition rates in Austria with classification trees”. International Journal of Research & Method in Education (2022).
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