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Time Series Forecasting by Evolving Artificial Neural Networks Using 'Shuffle', Cross-Validation and Ensembles

机译:通过使用“混洗”,交叉验证和集成的人工神经网络发展时间序列预测

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Accurate time series forecasting are important for several business, research, and application of engineering systems. Evolutionary Neural Networks are particularly appealing because of their ability to design, in an automatic way, a model (an Artificial Neural Network) for an unspecified nonlinear relationship for time series values. This paper evaluates two methods to obtain the pattern sets that will be used by the artificial neural network in the evolutionary process, one called "shuffle" and another one carried out with cross-validation and ensembles. A study using these two methods will be shown with the aim to evaluate the effect of both methods in the accurateness of the final forecasting.
机译:准确的时间序列预测对于工程系统的多个业务,研究和应用非常重要。进化神经网络之所以特别吸引人,是因为它们能够自动设计用于时间序列值的未指定非线性关系的模型(人工神经网络)。本文评估了两种方法,以获取将由人工神经网络在进化过程中使用的模式集,一种称为“混洗”,另一种通过交叉验证和整合进行。将显示使用这两种方法的研究,目的是评估这两种方法对最终预测准确性的影响。

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