跨国增长回归的真实性和稳健性

K. Hoover, S. Perez
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引用次数: 272

摘要

Levine和Renelt(1992)以及Sala-i-Martin (1997a, b)的工作,试图使用Edward leamery(?? ?)的两个变体来测试各国人均GDP增长率的各种决定因素的稳健性。S极值界分析被重新检验。在一个现实的蒙特卡洛实验中,潜在决定因素的宇宙是从Levine和renelt中得出的??在S研究中,两个版本的极值界分析被评估为它们恢复真实规格的能力。Levine和renelt ??S方法被证明具有小尺寸和极低功耗:没有什么是健壮的;虽然Sala-i-Martina ? ?S方法被证明具有大尺寸和高功率:它是无差别的。这两种方法都与与LSE计量经济学方法相关的通用到特定搜索方法的横截面版本进行了比较。它的尺寸接近标称尺寸,功率高。Sala-i-Martina ? ?然后将S方法和从一般到具体的方法应用于原始两项研究的实际数据。结果与蒙特卡洛结果一致,并提示影响增长率差异的因素是政策制定者无法控制的因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Truth and Robustness in Cross-Country Growth Regressions
The work of Levine and Renelt (1992) and Sala-i-Martin (1997a, b) which attempted to test the robustness of various determinants of growth rates of per capita GDP among countries using two variants of Edward Leamerâ??s extreme-bounds analysis is reexamined. In a realistic Monte Carlo experiment in which the universe of potential determinants is drawn from those in Levine and Reneltâ??s study, both versions of the extreme-bounds analysis are evaluated for their ability to recover the true specification. Levine and Reneltâ??s method is shown to have low size and extremely low power: nothing is robust; while Sala-i-Martinâ??s method is shown to have high size and high power: it is undiscriminating. Both methods are compared to a cross-sectional version of the generalto-specific search methodology associated with the LSE approach to econometrics. It is shown to have size near nominal size and high power. Sala-i-Martinâ??s method and the general-to-specific method are then applied to the actual data from the original two studies. The results are consistent with the Monte Carlo results and are suggestive that the factors that most affect differences of growth rates are ones that are beyond the control of policymakers.
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