Conditionally Optimal Weights and Forward-Looking Approaches to Combining Forecasts

Christopher G. Gibbs, A. Vasnev
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引用次数: 14

Abstract

In applied forecasting, there is a trade-off between in-sample fit and out-of-sample forecast accuracy. Parsimonious model specifications typically outperform richer model specifications. Consequently, there is often predictable information in forecast errors that is difficult to exploit. However, we show how this predictable information can be exploited in forecast combinations. In this case, optimal combination weights should minimize conditional mean squared error, or a conditional loss function, rather than the unconditional variance as in the commonly used framework of Bates and Granger (1969). We prove that our conditionally optimal weights lead to better forecast performance. The conditionally optimal weights support other forward-looking approaches to combining forecasts, where the forecast weights depend on the expected model performance. We show that forward-looking
条件最优权重和前瞻性组合预测方法
在应用预测中,在样本内拟合和样本外预测精度之间存在权衡。简洁的模型规范通常优于丰富的模型规范。因此,在预测误差中往往存在难以利用的可预测信息。然而,我们展示了如何在预测组合中利用这些可预测的信息。在这种情况下,最优组合权重应该最小化条件均方误差或条件损失函数,而不是像Bates和Granger(1969)通常使用的框架那样最小化无条件方差。我们证明了我们的条件最优权重导致更好的预测性能。条件最优权重支持其他前瞻性方法来组合预测,其中预测权重依赖于预期的模型性能。我们展示了前瞻性
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