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Asymptotic Normality in Mixtures of Power Series Distributions

机译:幂级数分布的混合中的渐近正态性

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The problem of estimating the individual probabilities of a discrete distribution is considered. The true distribution of the independent observations is a mixture of a family of power series distributions. First, we ensure identifiability of the mixing distribution assuming mild conditions. Next, the mixing distribution is estimated by non-parametric maximum likelihood and an estimator for individual probabilities is obtained from the corresponding marginal mixture density. We establish asymptotic normality for the estimator of individual probabilities by showing that, under certain conditions, the difference between this estimator and the empirical proportions is asymptotically negligible. Our framework includes Poisson, negative binomial and logarithmic series as well as binomial mixture models. Simulations highlight the benefit in achieving normality when using the proposed marginal mixture density approach instead of the empirical one, especially for small sample sizes and/or when interest is in the tail areas. A real data example is given to illustrate the use of the methodology.
机译:考虑了估计离散分布的各个概率的问题。独立观测的真实分布是一系列幂级数分布的混合。首先,我们在温和条件下确保混合分布的可识别性。接下来,通过非参数最大似然估计混合分布,并从相应的边际混合密度获得单个概率的估计。通过证明在某些条件下,该估计量与经验比例之间的差异可以渐近地忽略不计,我们建立了单个概率估计量的渐近正态性。我们的框架包括泊松,负二项式和对数级数以及二项式混合模型。当使用建议的边际混合密度方法而不是经验方法时,模拟突出显示了达到正态性的好处,特别是对于小样本量和/或当关注尾部区域时。给出了一个真实的数据示例来说明该方法的使用。

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