Model selection and model averaging for matrix exponential spatial models

IF 0.8 4区 经济学 Q3 ECONOMICS
Ye Yang, Osman Doğan, Suleyman Taspinar
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引用次数: 2

Abstract

Abstract In this paper, we focus on a model specification problem in spatial econometric models when an empiricist needs to choose from a pool of candidates for the spatial weights matrix. We propose a model selection (MS) procedure for the matrix exponential spatial specification (MESS), when the true spatial weights matrix may not be in the set of candidate spatial weights matrices. We show that the selection estimator is asymptotically optimal in the sense that asymptotically it is as efficient as the infeasible estimator that uses the best candidate spatial weights matrix. The proposed selection procedure is also consistent in the sense that when the data generating process involves spatial effects, it chooses the true spatial weights matrix with probability approaching one in large samples. We also propose a model averaging (MA) estimator that compromises across a set of candidate models. We show that it is asymptotically optimal. We further flesh out how to extend the proposed selection and averaging schemes to higher order specifications and to the MESS with heteroscedasticity. Our Monte Carlo simulation results indicate that the MS and MA estimators perform well in finite samples. We also illustrate the usefulness of the proposed MS and MA schemes in a spatially augmented economic growth model.
矩阵指数空间模型的模型选择和模型平均
摘要在本文中,当经验主义者需要从空间权重矩阵的候选库中进行选择时,我们关注空间计量经济模型中的模型规范问题。当真正的空间权重矩阵可能不在候选空间权重矩阵的集合中时,我们提出了矩阵指数空间规范(MESS)的模型选择(MS)过程。我们证明了选择估计器是渐近最优的,因为它渐近地与使用最佳候选空间权重矩阵的不可行估计器一样有效。所提出的选择过程也是一致的,因为当数据生成过程涉及空间效应时,它选择真实的空间权重矩阵,其概率接近大样本中的一个。我们还提出了一种模型平均(MA)估计器,该估计器在一组候选模型之间进行折衷。我们证明了它是渐近最优的。我们进一步充实了如何将所提出的选择和平均方案扩展到高阶规范和具有异方差的MESS。我们的蒙特卡罗模拟结果表明,MS和MA估计量在有限样本中表现良好。我们还说明了所提出的MS和MA方案在空间增强经济增长模型中的有用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Econometric Reviews
Econometric Reviews 管理科学-数学跨学科应用
CiteScore
1.70
自引率
0.00%
发文量
27
审稿时长
>12 weeks
期刊介绍: Econometric Reviews is widely regarded as one of the top 5 core journals in econometrics. It probes the limits of econometric knowledge, featuring regular, state-of-the-art single blind refereed articles and book reviews. ER has been consistently the leader and innovator in its acclaimed retrospective and critical surveys and interchanges on current or developing topics. Special issues of the journal are developed by a world-renowned editorial board. These bring together leading experts from econometrics and beyond. Reviews of books and software are also within the scope of the journal. Its content is expressly intended to reach beyond econometrics and advanced empirical economics, to statistics and other social sciences.
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