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Time series forecasting using a weighted cross-validation evolutionary artificial neural network ensemble

机译:使用加权交叉验证进化人工神经网络集成的时间序列预测

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摘要

The ability to forecast the future based on past data is a key tool to support individual and organizational decision making. In particular, the goal of Time Series Forecasting (TSF) is to predict the behavior of complex systems by looking only at past patterns of the same phenomenon. In recent years, several works in the literature have adopted Evolutionary Artificial Neural Networks (EANNs) for TSF. In this work, we propose a novel EANN approach, where a weighted n-fold validation fitness scheme is used to build an ensemble of neural networks, under four different combination methods: mean, median, softmax and rank-based. Several experiments were held, using six real-world time series with different characteristics and from distinct domains. Overall, the proposed approach achieved competitive results when compared with a non-weighted n-fold EANN ensemble, the simpler 0-fold EANN and also the popular Holt-Winters statistical method.
机译:根据过去的数据预测未来的能力是支持个人和组织决策的关键工具。特别地,时间序列预测(TSF)的目标是仅通过查看同一现象的过去模式来预测复杂系统的行为。近年来,文献中的一些著作已将进化人工神经网络(EANN)用于TSF。在这项工作中,我们提出了一种新颖的EANN方法,其中采用了加权n折验证适合度方案,通过四种不同的组合方法(均值,中位数,softmax和基于等级)来构建神经网络的集成。使用六个具有不同特征和不同领域的真实世界时间序列进行了几次实验。总体而言,与非加权n倍EANN集成,更简单的0倍EANN以及流行的Holt-Winters统计方法相比,该方法取得了竞争性结果。

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