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Automatic Smoothing Parameter Selection in GAMLSS with an Application to Centile Estimation

Overview
Publisher Sage Publications
Specialties Public Health
Science
Date 2013 Feb 5
PMID 23376962
Citations 36
Authors
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Abstract

A method for automatic selection of the smoothing parameters in a generalised additive model for location, scale and shape (GAMLSS) model is introduced. The method uses a P-spline representation of the smoothing terms to express them as random effect terms with an internal (or local) maximum likelihood estimation on the predictor scale of each distribution parameter to estimate its smoothing parameters. This provides a fast method for estimating multiple smoothing parameters. The method is applied to centile estimation where all four parameters of a distribution for the response variable are modelled as smooth functions of a transformed explanatory variable x This allows smooth modelling of the location, scale, skewness and kurtosis parameters of the response variable distribution as functions of x.

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