
This article shows how Bayesian inference for switching regression models and their generalizations can be achieved by the specification of loss functions which overcome the label switching problem common to all mixture models. We also derive an extension to models where the number of components in the mixture is unknown, based on the birthand-death technique developed in recent literature. The methods are illustrated on various real datasets.
330, Bayesian inference, birth-and-death technique, Probabilités et mathématiques appliquées, 510, 519, switching regression models, mixture models
330, Bayesian inference, birth-and-death technique, Probabilités et mathématiques appliquées, 510, 519, switching regression models, mixture models
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