首页> 外文会议>European Signal Processing Conference;EUSIPCO >BAYESIAN ESTIMATION OF MIXTURES OF SKEWED ALPHA STABLE DISTRIBUTIONS WITH AN UNKNOWN NUMBER OF COMPONENTS
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BAYESIAN ESTIMATION OF MIXTURES OF SKEWED ALPHA STABLE DISTRIBUTIONS WITH AN UNKNOWN NUMBER OF COMPONENTS

机译:组件数未知的歪斜α稳定分布混合的贝叶斯估计

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Alpha stable distributions are widely accepted models for impulsive data. Despite their flexibility in modelling varying degrees of impulsiveness and skewness, they fall short of modelling multimodal data. In this work, we present the alpha-stable mixture model which provides a framework for modelling multimodal, skewed and impulsive data. We describe new parameter estimation techniques for this model based on numerical Bayesian techniques which not only can estimate the alpha-stable and mixture parameters, but also the number of components in the mixture. In particular, we employ the reversible jump Markov chain Monte Carlo technique.
机译:Alpha稳定分布是脉冲数据的公认模型。尽管它们在建模各种程度的冲动和偏斜方面具有灵活性,但它们在建模多模态数据方面却缺乏经验。在这项工作中,我们介绍了α稳定的混合模型,该模型提供了用于建模多峰,偏斜和脉冲数据的框架。我们基于数字贝叶斯技术描述了该模型的新参数估计技术,该技术不仅可以估计alpha稳定参数和混合物参数,而且可以估计混合物中的组分数量。特别是,我们采用了可逆跳马尔可夫链蒙特卡洛技术。

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