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Decomposable pseudodistances and applications in statistical estimation

机译:可分解伪距及其在统计估计中的应用

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The aim of this paper is to introduce new statistical criteria for estimation, suitable for inference in models with common continuous support. This proposal is in the direct line of a renewed interest for divergence based inference tools imbedding the most classical ones, such as maximum likelihood, Chi-square or Kullback-Leibler. General pseudodistances with decomposable structure are considered, they allowing defining minimum pseudodistance estimators, without using nonparametric density estimators. A special class of pseudodistances indexed by α > 0, leading for α ↓ 0 to the Kullback-Leibler divergence, is presented in detail. Corresponding estimation criteria are developed and asymptotic properties are studied. The estimation method is then extended to regression models. Finally, some examples based on Monte Carlo simulations are discussed.
机译:本文的目的是引入新的统计估计标准,适用于在具有共同连续支持的模型中进行推断。这项提议是对基于散度的推理工具(包括最大似然,卡方或Kullback-Leibler)等最经典工具的重新关注。考虑具有可分解结构的一般伪距,它们允许定义最小伪距估计量,而无需使用非参数密度估计量。详细介绍了由α> 0索引的一类特殊伪距,它导致α↓0导致Kullback-Leibler散度。建立了相应的估计准则,研究了渐近性质。然后将估计方法扩展到回归模型。最后,讨论了一些基于蒙特卡洛模拟的例子。

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