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An MM algorithm for estimation of a two component semiparametric density mixture with a known component

机译:用于估计具有已知组分的两组分半参数密度混合物的MM算法

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We consider a semiparametric mixture of two univariate density functions where one of them is known while the weight and the other function are unknown. We do not assume any additional structure on the unknown density function. For this mixture model, we derive a new sufficient identifiability condition and pinpoint a specific class of distributions describing the unknown component for which this condition is mostly satisfied. We also suggest a novel approach to estimation of this model that is based on an idea of applying a maximum smoothed likelihood to what would otherwise have been an ill-posed problem. We introduce an iterative MM (Majorization-Minimization) algorithm that estimates all of the model parameters. We establish that the algorithm possesses a descent property with respect to a log-likelihood objective functional and prove that the algorithm, indeed, converges. Finally, we also illustrate the performance of our algorithm in a simulation study and apply it to a real dataset.
机译:我们考虑两个单变量密度函数的半参数混合,其中一个已知,而权重和另一个未知。我们不假定未知密度函数上的任何其他结构。对于此混合模型,我们得出了一个新的足够的可识别性条件,并指出了描述该条件最满足的未知成分的特定分布类别。我们还建议了一种新颖的方法来估计该模型,该方法基于将最大平滑可能性应用于原本可能是不适的问题的想法。我们引入了一种迭代MM(主化-最小化)算法,用于估计所有模型参数。我们建立了该算法相对于对数似然目标函数具有下降性,并证明了该算法的确收敛。最后,我们还将在仿真研究中说明算法的性能,并将其应用于真实数据集。

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