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A comparison of linear forecasting models and neural networks: an application to Euro inflation and Euro Divisia

机译:线性预测模型和神经网络的比较:在欧元通货膨胀和欧元除数中的应用

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摘要

Linear models reach their limitations in applications with nonlinearities in the data. In this paper new empirical evidence is provided on the relative Euro inflation forecasting performance of linear and non-linear models. The well established and widely used univariate ARIMA and multivariate VAR models are used as linear forecasting models whereas neural networks (NN) are used as non-linear forecasting models. It is endeavoured to keep the level of subjectivity in the NN building process to a minimum in an attempt to exploit the full potentials of the NN. It is also investigated whether the historically poor performance of the theoretically superior measure of the monetary services flow, Divisia, relative to the traditional Simple Sum measure could be attributed to a certain extent to the evaluation of these indices within a linear framework. Results obtained suggest that non-linear models provide better within-sample and out-of-sample forecasts and linear models are simply a subset of them. The Divisia index also outperforms the Simple Sum index when evaluated in a non-linear framework.
机译:线性模型在数据非线性的应用中达到了其极限。本文提供了关于线性和非线性模型的相对欧元通货膨胀预测性能的新经验证据。公认的且使用广泛的单变量ARIMA和多变量VAR模型被用作线性预测模型,而神经网络(NN)被用作非线性预测模型。努力将NN构建过程中的主观性水平降至最低,以尝试挖掘NN的全部潜力。还研究了相对于传统的“简单和”量度而言,货币服务流量理论上较高的量度“ Divisia”在历史上的较差表现是否可以在一定程度上归因于线性框架内对这些指数的评估。获得的结果表明,非线性模型可以提供更好的样本内和样本外预测,而线性模型只是其中的一部分。在非线性框架中评估时,Divisia指数也胜过简单和指数。

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