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Maximum smoothed likelihood for multivariate mixtures

机译:多元混合物的最大平滑可能性

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We introduce an algorithm for estimating the parameters in a finite mixture of completely unspecified multivariate components in at least three dimensions under the assumption of conditionally independent coordinate dimensions. We prove that this algorithm, based on a majorization-minimization idea, possesses a desirable descent property just as any em algorithm does. We discuss the similarities between our algorithm and a related one, the so-called nonlinearly smoothed em algorithm for the non-mixture setting. We also demonstrate via simulation studies that the new algorithm gives very similar results to another algorithm that has been shown empirically to be effective but that does not satisfy any descent property. We provide code for implementing the new algorithm in a publicly available R package.
机译:我们引入了一种算法,该算法在条件独立的坐标维的假设下,估计至少三个维中完全未指定的多元分量的有限混合中的参数。我们证明了这种基于最小化思想的算法,就像任何em算法一样,都具有理想的下降特性。我们讨论了我们的算法与相关算法(非混合设置的所谓的非线性平滑em算法)之间的相似性。我们还通过仿真研究证明,该新算法与另一种算法的结果非常相似,该算法已通过经验证明是有效的,但不满足任何下降特性。我们提供了用于在公开的R包中实现新算法的代码。

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