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Strong consistency of the maximum likelihood estimator for finite mixtures of location-scale distributions when the scale parameters are exponentially small

机译:当比例尺参数呈指数形式变小时,最大似然估计器对于位置比例尺分布的有限混合具有很强的一致性

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摘要

in a finite mixture of location-scale distributions the maximum likelihood estimator does not exist because of the unboundedness of the likelihood function when the scale parameter of some mixture component approaches zero. In order to study the strong consistency of the maximum likelihood estimator, we consider the case where the scale parameters of the component distributions are restricted from below by c(n), where {c(n)} is a sequence of positive real numbers which tend to zero as the sample size n increases. We prove that under mild regularity conditions the maximum likelihood estimator is strongly consistent if the scale parameters are restricted from below by c(n) = exp(-n(d)), 0 < d < 1.
机译:在位置尺度分布的有限混合中,由于某些混合分量的尺度参数接近零时,由于似然函数的无界性,因此不存在最大似然估计器。为了研究最大似然估计器的强一致性,我们考虑了分量分布的比例参数从下方受c(n)约束的情况,其中{c(n)}是一个正实数序列,随样本大小n的增加而趋于零。我们证明在中等规律性条件下,如果比例参数由c(n)= exp(-n(d))从下面限制,则0

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