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Adaptive learning from model space

机译:从模型空间自适应学习

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Dynamic model averaging (DMA) is used extensively for the purpose of economic forecasting. This study extends the framework of DMA by introducing adaptive learning from model space. In the conventional DMA framework all models are estimated independently and hence the information of the other models is left unexploited. In order to exploit the information in the estimation of the individual time-varying parameter models, this paper proposes not only to average over the forecasts but, in addition, also to dynamically average over the time-varying parameters. This is done by approximating the mixture of individual posteriors with a single posterior, which is then used in the upcoming period as the prior for each of the individual models. The relevance of this extension is illustrated in three empirical examples involving forecasting US inflation, US consumption expenditures, and forecasting of five major US exchange rate returns. In all applications adaptive learning from model space delivers improvements in out-of-sample forecasting performance.
机译:动态模型平均(DMA)是广泛用于经济预测的目的。本研究通过从模型空间引入自适应学习来扩展DMA的框架。在传统的DMA框架中,所有型号均估计地估计,因此其他模型的信息仍未爆发。为了利用在估计各个时变参数模型中的信息中,本文不仅提出了对预测的平均值,而且还提出了在时变参数上动态平均平均值。这是通过用单个后续的单个后续的单个后续的混合物来完成,然后在即将到来的每个单独模型中使用。这一延伸的相关性在三个经验例子中涉及预测美国通货膨胀,美国消费支出和预测五个主要的美国汇率回报。在所有应用中,从模型空间的自适应学习提供了改进样本预测性能。

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