Article ID Journal Published Year Pages File Type
563809 Signal Processing 2010 10 Pages PDF
Abstract

The stable distribution is a very useful tool to model impulsive data. In this work, a fully Bayesian mixture of symmetric stable distribution model is presented. Despite the non-existence of closed form for αα-stable distributions, the use of the product property make it possible to infer on parameters using a straightforward Gibbs sampling. This model is compared to the mixture of Gaussians model. Our proposed methodology is proved to be more robust to outliers than the mixture of Gaussians. Therefore, it is suitable to model mixture of impulsive data. Moreover, as Gaussian is a particular case of the αα-stable distribution, the proposed model is a generalization of mixture of Gaussians. Mixture of symmetric αα-stable is intensively tested in both, simulated and real data.

Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
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