Modelling background noise in finite mixtures of generalized linear regression models

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Abstract

In this paper we show how only a few outliers can completely break down EM-estimation of mixtures of regression models. A simple, yet very effective way of dealing with this problem, is to use a component where all regression parameters are fixed to zero to model the background noise. This noise component can be easily defined for different types of generalized linear models, has a familiar interpretation as the empty regression model, and is not very sensitive with respect to its own parameters.

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Leisch, F. (2008). Modelling background noise in finite mixtures of generalized linear regression models. In COMPSTAT 2008 - Proceedings in Computational Statistics, 18th Symposium (pp. 385–396). Springer Berlin Heidelberg. https://doi.org/10.1007/978-3-7908-2084-3_32

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