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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >Assessment of the number of components in Gaussian mixture models in the presence of multiple local maximizers
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Assessment of the number of components in Gaussian mixture models in the presence of multiple local maximizers

机译:在存在多个局部最大化器的情况下评估高斯混合模型中的分量数

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摘要

Gaussian mixtures are very flexible in representing the underlying structure in the data. However, the likelihood inference for Gaussian mixtures with unrestricted covariance matrices is theoretically and practically challenging because the likelihood function is unbounded and often has multiple local maximizers. As shown in the numerical studies of this paper, the presence of multiple local maximizers including spurious local maximizers affects the performances of model selection criteria used to choose the number of components. In this paper we propose a new type of likelihood-based estimator, a gradient-based k-deleted maximum likelihood estimator, for Gaussian mixture models. The proposed estimator is designed to avoid spurious local maximizers and choose a statistically desirable local maximizer in the presence of multiple local maximizers.Wefirst prove the consistency of the proposed estimator and then examine, by a real-data example and simulation studies, the performance of the proposed method in the likelihood-based model selection criteria commonly used to assess the number of components in Gaussian mixture models.
机译:高斯混合在表示数据的基础结构方面非常灵活。然而,由于似然函数是无界的并且通常具有多个局部极大值,因此具有不受限制的协方差矩阵的高斯混合的似然推断在理论和实践上都具有挑战性。如本文的数值研究所示,包括伪局部最大化器在内的多个局部最大化器的存在会影响用于选择组件数量的模型选择标准的性能。在本文中,我们为高斯混合模型提出了一种新型的基于似然的估计器,一种基于梯度的k删除的最大似然估计器。拟议的估计器旨在避免出现虚假的局部最大化器,并在存在多个局部最大化器的情况下选择统计上理想的局部最大化器。我们首先证明拟定估计器的一致性,然后通过实际数据示例和仿真研究来检验在基于可能性的模型选择标准中提出的方法通常用于评估高斯混合模型中的分量数。

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