xml:id='sam11351-para-0001'>Noise‐affected economic time series, realizations of stochastic processes exhibiting complex and possibly nonlin'/> A wavelet threshold denoising procedure for multimodel predictions: An application to economic time series
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A wavelet threshold denoising procedure for multimodel predictions: An application to economic time series

机译:多模型预测的小波阈值去噪程序:经济时间序列的应用

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xml:id="sam11351-para-0001">Noise‐affected economic time series, realizations of stochastic processes exhibiting complex and possibly nonlinear dynamics, are dealt with. This is often the case of time series found in economics, which notoriously suffer from problems such as low signal‐to‐noise ratios, asymmetric cycles and multiregimes patterns. In such a framework, even sophisticated statistical models might generate suboptimal predictions, whose quality can further deteriorate unless time consuming updating or deeper model revision procedures are carried out on a regular basis. However, when the models' outcomes are expected to be disseminated in timeliness manner (as in the case of Central Banks or national statistical offices), their modification might not be a viable solution, due to time constraints. On the other hand, if the application of simpler linear models usually entails relatively easier tuning‐up procedures, this would come at the expenses of the quality of the predictions yielded. A mixed, self‐tuning forecasting method is therefore proposed. This is an automatic, 2‐stage procedure, able to generate predictions by exploiting the denoising capabilities provided by the wavelet theory in conjunction with a compounded forecasting generator. Its out‐of‐sample performances are evaluated through an empirical study carried out on macroeconomic time series.
机译: XML:ID =“SAM11351-PARA-0001”>受噪声影响的经济时序序列,处理具有复杂和可能非线性动力学的随机过程的实现。这通常是在经济学中发现的时间序列的情况,这令人惊叹的遭受低信噪比,不对称循环和多个时间模式的问题。在这种框架中,即使是复杂的统计模型也可能产生次优预测,除非定期执行更新或更深的模型修订程序,除非耗时地进行更新或更深的模型修订程序,其质量可以进一步恶化。但是,当模型的结果预计以及时的方式传播(如中央银行或国家统计局),由于时间限制,他们的修改可能不是可行的解决方案。另一方面,如果更简单的线性模型的应用通常需要相对容易的调整程序,这将来自预测质量的费用。因此提出了混合的自调整预测方法。这是一种自动的2级程序,能够通过利用小波理论提供的去噪能力结合复合的预测发生器来产生预测。通过在宏观经济时间序列上进行的实证研究来评估其样本的表现。

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