Robust mixture modelling using sub-Gaussian stable distribution
Machine Learning
2017-01-25 v1
Abstract
Heavy-tailed distributions are widely used in robust mixture modelling due to possessing thick tails. As a computationally tractable subclass of the stable distributions, sub-Gaussian -stable distribution received much interest in the literature. Here, we introduce a type of expectation maximization algorithm that estimates parameters of a mixture of sub-Gaussian stable distributions. A comparative study, in the presence of some well-known mixture models, is performed to show the robustness and performance of the mixture of sub-Gaussian -stable distributions for modelling, simulated, synthetic, and real data.
Cite
@article{arxiv.1701.06749,
title = {Robust mixture modelling using sub-Gaussian stable distribution},
author = {Mahdi Teimouri and Saeid Rezakhah and Adel Mohammdpour},
journal= {arXiv preprint arXiv:1701.06749},
year = {2017}
}
Comments
14 pages 4 figures