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Nonlinear Quantile Regression Estimation of Longitudinal Data
Authors:Andreas Karlsson
Institution:1. Centre for Clinical Research V?ster?s , Uppsala University , V?ster?s, Sweden andreas.karlsson@vlt.se
Abstract:This article examines a weighted version of the quantile regression estimator as defined by Koenker and Bassett (1978 Koenker , R. , Bassett , G. ( 1978 ). Regression quantiles . Econometrica 46 : 3350 .Crossref], Web of Science ®] Google Scholar]), adjusted to the case of nonlinear longitudinal data. Using a four-parameter logistic growth function and error terms following an AR(1) model, different weights are used and compared in a simulation study. The findings indicate that the nonlinear quantile regression estimator is performing well, especially for the median regression case, that the differences between the weights are small, and that the estimator performs better when the correlation in the AR(1) model increases. A comparison is also made with the corresponding mean regression estimator, which is found to be less robust. Finally, the estimator is applied to a data set with growth patterns of two genotypes of soybean, which gives some insights into how the quantile regressions provide a more complete picture of the data than the mean regression.
Keywords:Dependent errors  Median regression  Repeated measures  Simulation study
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