Title of article :
Cross-validating fit and predictive accuracy of nonlinear quantile regressions
Author/Authors :
Harry Haupt، نويسنده , , Kathrin Kagerer&Joachim Schnurbus، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Pages :
16
From page :
2939
To page :
2954
Abstract :
The paper proposes a cross-validation method to address the question of specification search in a multiple nonlinear quantile regression framework. Linear parametric, spline-based partially linear and kernelbased fully nonparametric specifications are contrasted as competitors using cross-validated weighted L1-norm based goodness-of-fit and prediction error criteria. The aim is to provide a fair comparison with respect to estimation accuracy and/or predictive ability for different semi- and nonparametric specification paradigms. This is challenging as the model dimension cannot be estimated for all competitors and the meta-parameters such as kernel bandwidths, spline knot numbers and polynomial degrees are difficult to compare. General issues of specification comparability and automated data-driven meta-parameter selection are discussed. The proposed method further allows us to assess the balance between fit and model complexity.An extensive Monte Carlo study and an application to a well-known data set provide empirical illustration of the method.
Keywords :
Model selection , mixed covariates , Quantile regression , Spline , Kernel , cross validation
Journal title :
JOURNAL OF APPLIED STATISTICS
Serial Year :
2011
Journal title :
JOURNAL OF APPLIED STATISTICS
Record number :
712712
Link To Document :
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