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引用次数: 0
摘要
本文提出了一种在参数不稳定和异方差情况下的频数模型平均方法。我们结合预测模型的稳定规范和中断规范推导出最优权重,权重来自于最小化留一验证交叉信息准则(CV)。我们描述了 CV 的渐近分布,并提供了可行的最优 CV 权重的分析表达式。我们对美国和台湾 GDP 增长的模拟和应用预测表明,相对于其他方法(如 Mallows 平均法、近似贝叶斯平均法和等权法),CV 模型平均法具有更优越的性能。
Predictive model averaging with parameter instability and heteroskedasticity
This paper proposes a frequentist model averaging approach in the presence of parameter instability and heteroskedasticity. We derive optimal weights combining the stable and break specifications of a predictive model, with the weights from minimizing the leave-one-out cross-validation information criterion (CV). We characterize the asymptotic distribution of the CV and provide the analytical expressions of the feasible optimal CV weights. Our simulations and applications forecasting the US and Taiwanese GDP growth demonstrate the superior performance of the CV model averaging relative to other methods such as the Mallows averaging, the approximate Bayesian averaging, and equal weighting.
期刊介绍:
The Bulletin of Economic Research is an international journal publishing articles across the entire field of economics, econometrics and economic history. The Bulletin contains original theoretical, applied and empirical work which makes a substantial contribution to the subject and is of broad interest to economists. We welcome submissions in all fields and, with the Bulletin expanding in new areas, we particularly encourage submissions in the fields of experimental economics, financial econometrics and health economics. In addition to full-length articles the Bulletin publishes refereed shorter articles, notes and comments; authoritative survey articles in all areas of economics and special themed issues.