Variable Selection and Functional Form Uncertainty in Cross-Country Growth Regressions

Tim Salimans
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引用次数: 19

Abstract

Regression analyses of cross-country economic growth data are complicated by two main forms of model uncertainty: the uncertainty in selecting explanatory variables and the uncertainty in specifying the functional form of the regression function. Most discussions in the literature address these problems independently, yet a joint treatment is essential. We perform this joint treatment by extending the linear model to allow for multiple-regime parameter heterogeneity of the type suggested by new growth theory, while addressing the variable selection problem by means of Bayesian model averaging. Controlling for variable selection uncertainty, we confirm the evidence in favor of new growth theory presented in several earlier studies. However, controlling for functional form uncertainty, we find that the effects of many of the explanatory variables identified in the literature are not robust across countries and variable selections.
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跨国增长回归的变量选择与功能形式不确定性
跨国经济增长数据的回归分析由于两种主要形式的模型不确定性而变得复杂:选择解释变量的不确定性和指定回归函数函数形式的不确定性。文献中的大多数讨论都独立地解决了这些问题,但联合治疗是必不可少的。我们通过扩展线性模型来执行这种联合处理,以允许新增长理论提出的多制度参数异质性,同时通过贝叶斯模型平均来解决变量选择问题。控制变量选择的不确定性,我们确认证据有利于新增长理论提出了几个早期的研究。然而,控制功能形式的不确定性,我们发现在文献中确定的许多解释变量的影响在国家和变量选择上并不稳健。
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