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Penalized maximum likelihood for multivariate Gaussian mixture

机译:多元高斯混合物的最大可能性最大可能性

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摘要

In this paper, we first consider the parameter estimation of a multivariate random process distribution using multivariate Gaussian mixture law. The labels of the mixture are allowed to have a general probability law which gives the possibility to modelize a temporal structure of the process under study. We generalize the case of univariate Gaussian mixture in [1] to show that the likelihood is unbounded and goes to infinity when one of the covariance matrices approaches the boundary of singularity of the non negative definite matrices set. We characterize the parameter set of these singularities. As a solution to this degeneracy problem, we show that the penalization of the likelihood by an Inverse Wishart prior on covariance matrices results to a penalized or maximum a posteriori criterion which is bounded. Then, the existence of positive definite matrices optimizing this criterion can be guaranteed. We also show that with a modified FM procedure or with a Bayesian sampling scheme, we can constrain covariance matrices to belong to a particular subclass of covariance matrices. Finally, we study degeneracies in the source separation problem where the characterization of parameter singularity set is more complex. We show, however, that Inverse Wishart prior on covariance matrices eliminates the degeneracies in this case too.
机译:在本文中,首先考虑使用多元高斯混合法律的多变量随机过程分布的参数估计。允许混合物的标记具有一般性概率法,其能够建模在研究下的过程的时间结构建模。我们概括了[1]中的单变量高斯混合物的情况,表明当一个协方差矩阵中的一个协方差矩阵置于设置的奇异性边界时,似乎是无限的。我们描述了这些奇点的参数集。作为对此退化问题的解决方案,我们表明,在协方差矩阵之前,通过反向愿望对可能导致的惩罚或最大被界限的后验标准来惩罚。然后,可以保证存在正定的矩阵优化该标准。我们还表明,通过修改的FM程序或贝叶斯采样方案,我们可以约束协方差矩阵属于协方差矩阵的特定子类。最后,我们在源分离问题中研究了源分离问题的变性,其中参数奇点设定的表征更复杂。然而,我们表明,在协方差矩阵之前的反向愿望也消除了这种情况下的退化期。

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