Abstract
School choice policies allow parents to act on their preferences when choosing a school for their child(ren). These policies, however, can lead to planning problems for policymakers . We contribute to a better empirical understanding of parental school preferences and the factors shaping these preferences. Using survey data (n = 4,574), we contrast five machine learning algorithms with logistic regression. We illustrate the predictive superiority of machine learning algorithms and that parents’ attitudes on time spent on standardized tests, and school funding are the most decisive predictors of their preferences and support for school choice policies.
| Original language | English |
|---|---|
| Journal | Journal of School Choice |
| DOIs | |
| Publication status | E-pub ahead of print - 19 May 2025 |
Austrian Classification of Fields of Science and Technology (ÖFOS)
- 502005 Economics of education
- 503001 General education
- 503006 Educational research
Keywords
- parents’ preferences
- survey research
- Machine learning
- School Choice
- K-12 Education
- parents
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