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Exponentially tilted likelihood inference on growing dimensional unconditional moment models

机译:呈指数倾斜的似然推断在越来越多的无条件模型

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Growing-dimensional data with likelihood function unavailable are often encountered in various fields. This paper presents a penalized exponentially tilted (PET) likelihood for variable selection and parameter estimation for growing dimensional unconditional moment models in the presence of correlation among variables and model misspecification. Under some regularity conditions, we investigate the consistent and oracle properties of the PET estimators of parameters, and show that the constrained PET likelihood ratio statistic for testing contrast hypothesis asymptotically follows the chi-squared distribution. Theoretical results reveal that the PET likelihood approach is robust to model misspecification. We study high-order asymptotic properties of the proposed PET estimators. Simulation studies are conducted to investigate the finite performance of the proposed methodologies. An example from the Boston Housing Study is illustrated. (C) 2017 Elsevier B.V. All rights reserved.
机译:在各个领域通常遇到具有似然函数不可用的生长维数据。 本文提出了在存在变量和模型拼写的相关性存在相关性中的变量选择和参数估计的惩罚指数倾斜(PET)可能性。 在一些规律性条件下,我们研究了参数的PET估计器的一致和oracle属性,并表明,用于测试造影假设的受约束的PET似然比统计学渐近遵循Chi平方分布。 理论结果表明,宠物似然方法是模拟误操作的强大。 我们研究了拟议的宠物估算器的高阶渐近性质。 进行仿真研究以研究所提出的方法的有限性。 说明了波士顿住房研究的一个例子。 (c)2017 Elsevier B.v.保留所有权利。

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