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A comparison of mixture models for density estimation

机译:密度估计混合模型的比较

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Gaussian mixture models (GMMs) are a popular tool for density estimation. However, these models are limited by the fact that they either impose strong constraints on the covariance matrices of the component densities or no constraints at all. This paper presents an experimental comparison of GMMs and the recently introduced mixtures of linear latent variable models. It is shown that the latter models are a more flexible alternative for GMMs and often lead to improved results.
机译:高斯混合模型(GMMS)是一种用于密度估计的流行工具。然而,这些模型的限制为它们对组件密度的协方差矩阵施加强制限制或根本没有约束。本文介绍了GMMS的实验比较,最近引入了线性潜在变量模型的混合物。结果表明,后一个型号是GMM的更灵活的替代方案,并且通常导致改善的结果。

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