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Non-parametric Panel Data Models with Interactive Fixed Effects
by
FREYBERGER, JOACHIM
in
Academic achievement
/ Data models
/ Economic models
/ Experiments
/ Longitudinal studies
/ Monte Carlo simulation
/ Nonparametric statistics
/ Panel data
/ Teaching
/ Teaching methods
/ Time periods
2018
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Do you wish to request the book?
Non-parametric Panel Data Models with Interactive Fixed Effects
by
FREYBERGER, JOACHIM
in
Academic achievement
/ Data models
/ Economic models
/ Experiments
/ Longitudinal studies
/ Monte Carlo simulation
/ Nonparametric statistics
/ Panel data
/ Teaching
/ Teaching methods
/ Time periods
2018
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Non-parametric Panel Data Models with Interactive Fixed Effects
Journal Article
Non-parametric Panel Data Models with Interactive Fixed Effects
2018
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Overview
This article studies non-parametric panel data models with multidimensional, unobserved individual effects when the number of time periods is fixed. I focus on models where the unobservables have a factor structure and enter an unknown structural function non-additively. The setup allows the individual effects to impact outcomes differently in different time periods and it allows for heterogeneous marginal effects. I provide sufficient conditions for point identification of all parameters of the model. Furthermore, I present a non-parametric sieve maximum likelihood estimator as well as flexible semiparametric and parametric estimators. Monte Carlo experiments demonstrate that the estimators perform well in finite samples. Finally, in an empirical application, I use these estimators to investigate the relationship between teaching practice and student achievement. The results differ considerably from those obtained with commonly used panel data methods.
Publisher
Oxford University Press
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