Are Professional Forecasters Bayesian?

S. Manzan
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引用次数: 7

Abstract

I evaluate whether expectations of professional forecasters are consistent with the property of Bayesian learning that the expected uncertainty of a fixed target forecast should decline with the horizon. I obtain a measure of individual uncertainty from the density forecasts of the Survey of Professional Forecasters (SPF) and the ECB-SPF and use it to test the prediction of the learning model. Empirically, I find that the prediction is often violated, in particular when forecasters experience unexpected news in the most recent data release, and following quarters in which they produce narrow forecasts. In addition, I find significant heterogeneity in the updating behavior of forecasters in response to changes in these variables.
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专业预测师是贝叶斯派吗?
我评估了专业预测者的期望是否与贝叶斯学习的属性一致,即固定目标预测的预期不确定性应该随着地平线而下降。我从专业预报员调查(SPF)和ECB-SPF的密度预测中获得了个人不确定性的度量,并用它来测试学习模型的预测。根据经验,我发现预测经常被违背,特别是当预测者在最近的数据发布中遇到意想不到的消息时,以及在他们做出狭隘预测的季度之后。此外,我发现预测者在响应这些变量变化时的更新行为存在显著的异质性。
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