Abstract

Summary The paper discusses asymptotic properties of penalized spline smoothing if the spline basis increases with the sample size. The proof is provided in a generalized smoothing model allowing for non-normal responses. The results are extended in two ways. First, assuming the spline coefficients to be a priori normally distributed links the smoothing framework to generalized linear mixed models. We consider the asymptotic rates such that the Laplace approximation is justified and the resulting fits in the mixed model correspond to penalized spline estimates. Secondly, we make use of a fully Bayesian viewpoint by imposing an a priori distribution on all parameters and coefficients. We argue that with the postulated rates at which the spline basis dimension increases with the sample size the posterior distribution of the spline coefficients is approximately normal. The validity of this result is investigated in finite samples by comparing Markov chain Monte Carlo results with their asymptotic approximation in a simulation study.

Keywords

MathematicsSpline (mechanical)Smoothing splineApplied mathematicsSmoothingAsymptotic distributionLaplace's methodThin plate splineMarkov chain Monte CarloA priori and a posterioriBayesian probabilityMathematical optimizationSpline interpolationStatisticsEstimator

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Publication Info

Year
2008
Type
article
Volume
71
Issue
2
Pages
487-503
Citations
136
Access
Closed

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Göran Kauermann, Tatyana Krivobokova, Ludwig Fahrmeir (2008). Some Asymptotic Results on Generalized Penalized Spline Smoothing. Journal of the Royal Statistical Society Series B (Statistical Methodology) , 71 (2) , 487-503. https://doi.org/10.1111/j.1467-9868.2008.00691.x

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DOI
10.1111/j.1467-9868.2008.00691.x