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INFERENCE FOR MIXTURES OF SYMMETRIC DISTRIBUTIONS

机译:对称分布混合的推论

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This article discusses the problem of estimation of parameters in finite mixtures when the mixture components are assumed to be symmetric and to come from the same location family. We refer to these mixtures as semi-parametric because no additional assumptions other than symmetry are made regarding the parametric form of the component distributions. Because the class of symmetric distributions is so broad, identiliability of parameters is a major issue in these mixtures. We develop a notion of identifiability of finite mixture models, which we call k-identifiability, where k denotes the number of components in the mixture. We give sufficient conditions for k-identifiability of location mixtures of symmetric components when k - 2 or 3. We propose a novel distance-based method for estimating the (location and mixing) parameters from a ^-identifiable model and establish the strong consistency and asymptotic normality of the estimator. In the specific case of Z^-di.stance, we show that our estimator generalizes the Hodges-Lehmann estimator. We discuss the numerical implementation of these procedures, along with an empirical estimate of the component distribution, in the two-component case. In comparisons with maximum likelihood estimation assuming normal components, our method produces somewhat higher standard error estimates in the case where the components are truly normal, but dramatically outperforms the normal method when the components are heavy-tailed.
机译:本文讨论了当混合成分被假定为对称且来自同一位置族时,有限混合中的参数估计问题。我们将这些混合称为半参数,因为除了对称性之外,没有对组分分布的参数形式进行其他假设。因为对称分布的类别是如此广泛,所以参数的可识别性是这些混合物中的主要问题。我们提出了有限混合模型的可识别性的概念,我们将其称为k可识别性,其中k表示混合物中的组分数。我们为k-2或3时对称成分的位置混合物的k可识别性提供了充分的条件。我们提出了一种基于距离的新颖方法,用于从^可识别模型中估计(位置和混合)参数,并建立了强一致性和估计量的渐近正态性。在Z ^ -distance的特定情况下,我们证明了我们的估计器推广了Hodges-Lehmann估计器。我们讨论了在两个组件的情况下这些程序的数值实现以及组件分布的经验估计。与假设正常分量的最大似然估计相比,在分量确实是正常的情况下,我们的方法会产生更高的标准误差估计,但是当分量重尾时,其性能明显优于常规方法。

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