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Asymptotics for estimation and testing procedures under loss of identifiability

机译:在失去识别性的情况下进行估计和测试程序的渐近性

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摘要

Statistical analyses commonly make use of models that suffer from loss of identifiability. In this paper, we address important issues related to the parameter estimation and hypothesis testing in models with loss of identifiability. That is, there are multiple parameter points corresponding to the same true model. We refer the set of these parameter points to as the set of true parameter values. We consider the case where the set of true parameter values is allowed to be very large or even infinite, some parameter values may lie on the boundary of the parameter space, and the data are not necessarily independently and identically distributed. Our results are applicable to a large class of estimators and their related testing statistics derived from optimizing an objective function such as a likelihood. We examine three specific examples: (i) a finite mixture logistic regression model; (ii) stationary ARMA processes; (iii) general quadratic approximation using Hellinger distance. The applications to these examples demonstrate the applicability of our results in a broad range of difficult statistical problems. (c) 2004 Elsevier Inc. All rights reserved.
机译:统计分析通常使用遭受可识别性损失的模型。在本文中,我们解决了与可识别性丧失的模型中与参数估计和假设检验有关的重要问题。也就是说,有多个参数点对应于同一真实模型。我们将这些参数点的集合称为真实参数值的集合。我们考虑的情况是,允许一组真实的参数值很大或什至无限大,某些参数值可能位于参数空间的边界上,并且数据不一定独立且相同地分布。我们的结果适用于大量估计量,以及它们的相关检验统计量,这些统计量是通过优化目标函数(如似然率)得出的。我们研究三个具体示例:(i)有限混合逻辑回归模型; (ii)固定的ARMA流程; (iii)使用Hellinger距离的一般二次近似。这些示例的应用说明了我们的结果在各种困难的统计问题中的适用性。 (c)2004 Elsevier Inc.保留所有权利。

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