A semi-parametric additive model for variance heterogeneity |
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Authors: | R. A. Rigby D. M. Stasinopoulos |
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Affiliation: | (1) School of Mathematical Science, University of North London, Holloway Road, N7 8DB London, UK |
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Abstract: | This paper presents a flexible model for variance heterogeneity in a normal error model. Specifically, both the mean and variance are modelled using semi-parametric additive models. We call this model a Mean And Dispersion Additive Model (MADAM). A successive relaxation algorithm for fitting the model is described and justified as maximizing a penalized likelihood function with penalties for lack of smoothness in the additive non-parametric functions in both mean and variance models. The algorithm is implemented in GLIM4, allowing flexible and interactive modelling of variance heterogeneity. Two data sets are used for demonstration. |
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Keywords: | Additive models normal errors penalized likelihood semi-parametric smoothing splines variance heterogeneity MADAM |
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