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Evolving time-lagged feedforward neural networks for time series forecasting

机译:演化的时滞前馈神经网络用于时间序列预测

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摘要

Time Series Forecasting (TSF) is an important tool to sup- port both individual and organizational decisions. In this work, we propose a novel automatic Evolutionary Time- Lagged Feedforward Network (ETLFN) approach for TSF, based on an Estimation Distribution Algorithm (EDA) that evolves not only Artificial Neural Network (ANN) parame- ters but also which set of time lags are fed into the fore- casting model. Such approach is compared with similar strategy that only selects ANN parameter and the conven- tional TSF ARIMA methodology. Several experiments were held by considering six time series from distinct domains. The obtained multi-step ahead forecasts were evaluated us- ing SMAPE error criteria. Overall, the proposed ETLFN method obtained the best forecasting results. Moreover, it favors simpler neural network models, thus requiring less computational effort.
机译:时间序列预测(TSF)是支持个人和组织决策的重要工具。在这项工作中,我们基于估计分布算法(EDA)提出了一种针对TSF的新颖的自动时间滞后前馈网络(ETLFN)方法,该算法不仅可以演化人工神经网络(ANN)参数,还可以演化一组时间滞后被输入到预测模型中。将该方法与仅选择ANN参数和常规TSF ARIMA方法的类似策略进行了比较。通过考虑来自不同领域的六个时间序列进行了几次实验。使用SMAPE错误准则对获得的多步提前预测进行了评估。总体而言,提出的ETLFN方法获得了最佳的预测结果。此外,它支持更简单的神经网络模型,因此需要较少的计算工作。

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