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A comparison of two model averaging techniques with an application to growth empirics

机译:两种模型平均技术的比较及其在增长经验中的应用

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摘要

Parameter estimation under model uncertainty is a difficult and fundamental issue in econometrics. This paper compares the performance of various model averaging techniques. In particular, it contrasts Bayesian model averaging (BMA) — currently one of the standard methods used in growth empirics — with a new method called weighted-average least squares (WALS). The new method has two major advantages over BMA: its computational burden is trivial and it is based on a transparent definition of prior ignorance. The theory is applied to and sheds new light on growth empirics where a high degree of model uncertainty is typically present.
机译:模型不确定性下的参数估计是计量经济学中的一个困难而根本的问题。本文比较了各种模型平均技术的性能。特别是,它与贝叶斯模型平均(BMA)(当前用于增长经验的标准方法之一)与一种称为加权平均最小二乘(WALS)的新方法形成对比。与BMA相比,该新方法有两个主要优点:它的计算量很小,并且基于对先验无知的透明定义。该理论适用于通常存在高度模型不确定性的增长经验,并且为增长经验提供了新的思路。

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