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首页> 外文期刊>Bernoulli: official journal of the Bernoulli Society for Mathematical Statistics and Probability >Inference for a two-component mixture of symmetric distributions under log-concavity
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Inference for a two-component mixture of symmetric distributions under log-concavity

机译:对对称分布的双组分混合的推断在日志凹部下的两个组件混合

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In this article, we revisit the problem of estimating the unknown zero-symmetric distribution in a two-component location mixture model, considered in previous works, now under the assumption that the zero-symmetric distribution has a log-concave density. When consistent estimators for the shift locations and mixing probability are used, we show that the nonparametric log-concave Maximum Likelihood estimator (MLE) of both the mixed density and that of the unknown zero-symmetric component are consistent in the Hellinger distance. In case the estimators for the shift locations and mixing probability are root n-consistent, we establish that these MLE's converge to the truth at the rate n(-2/5) in the L-1 distance. To estimate the shift locations and mixing probability, we use the estimators proposed by (Ann. Statist. 35 (2007) 224-25 1). The unknown zero-symmetric density is efficiently computed using the R package logcondens. mode.
机译:在本文中,我们重新审视估计在以前的作品中考虑的双组分定位混合模型中未知零对称分布的问题,现在在零对称分布具有对数凹入密度的假设下。 当使用转换位置和混合概率的一致估计时,我们示出了混合密度和未知零对称组件的非参数对数最大似然估计器(MLE)在Hellinger距离中是一致的。 如果移位位置和混合概率的估计是根N-一致的情况下,我们将这些MLE在L-1距离中的速率N(-2/5)的速率下的真实性方面建立到真相。 为了估计移位位置和混合概率,我们使用(ANN。统计数据。35(2007)224-25 1)所提出的估算者。 使用R包LogCondens有效地计算未知的零对称密度。 模式。

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