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Theoretical grounding for estimation in conditional independence multivariate finite mixture models

机译:条件独立多元有限混合模型中估计的理论基础

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摘要

For the nonparametric estimation of multivariate finite mixture models with the conditional independence assumption, we propose a new formulation of the objective function in terms of penalised smoothed Kullback-Leibler distance. The nonlinearly smoothed majorisation-minimisation (NSMM) algorithm is derived from this perspective. An elegant representation of the NSMM algorithm is obtained using a novel projection-multiplication operator, a more precise monotonicity property of the algorithm is discovered, and the existence of a solution to the main optimisation problem is proved for the first time.
机译:对于带有条件独立性假设的多元有限混合模型的非参数估计,我们提出了一种基于惩罚平滑Kullback-Leibler距离的目标函数的新公式。从这个角度出发,得出了非线性平滑的最小化最大化(NSMM)算法。使用新颖的投影乘法算子可以很好地表示NSMM算法,发现该算法更精确的单调性,并首次证明存在针对主要优化问题的解决方案。

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