Publication | Closed Access
A Note on Penalized Spline Smoothing With Correlated Errors
120
Citations
32
References
2007
Year
Geometric InterpolationCorrelation StructurePenalized SplineData ScienceRobust ModelingUncertainty QuantificationPenalized Spline RegressionSmoothing ParameterEngineeringStatistical InferenceCurve FittingMultivariate ApproximationSpline (Mathematics)Functional Data AnalysisStatistics
AbstractWe investigate the behavior of data-driven smoothing parameters for penalized spline regression in the presence of correlated data. It has been shown for other smoothing methods that mean squared error minimizers, such as (generalized) cross-validation or the Akaike information criterion, are extremely sensitive to misspecifications of the correlation structure resulting in over- or (under-)fitting the data. In contrast to this, we show that a maximum likelihood–based choice of the smoothing parameter is more robust and that for a moderately misspecified correlation structure over- or (under-)fitting does not occur. This is demonstrated in simulations and data examples and is supported by theoretical investigations.KEY WORDS: Correlation structure misspecificationLinear mixed modelSmoothing parameter selection
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