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Limit of the optimal weight in least squares model averaging with non-nested models

机译:利用非嵌套模型平均最小二乘模型的最佳重量限制

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摘要

Recently, there has been increasing interest in the asymptotic limits of the optimal weight and the model averaging estimator within frequentist paradigm. Most existing literatures assume the candidate models are nested in such studies and the extension to non-nested models are not trivial. In the paper, we derive the asymptotic limit of the optimal weight in least squares model averaging when the candidate models are non-nested and could be all under-fitted. This result provides more insights into least squares model averaging and a new technique for future studies. (c) 2020 Elsevier B.V. All rights reserved.
机译:最近,对频率范例内的最佳重量和模型平均估计的渐近局部的渐近局域出现了兴趣。 大多数现有文献假设候选模型嵌套在这样的研究中,并且对非嵌套模型的扩展不是微不足道的。 在本文中,当候选模型是非嵌套时,我们导出最小二乘模型的最佳重量的渐近极限,并且可以全部底层。 该结果提供了更多的见解对最小二乘模型平均和未来研究的新技术。 (c)2020 Elsevier B.V.保留所有权利。

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