一种改进的数据预测自适应再训练程序

D. Năstac, P. Cristea
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引用次数: 1

摘要

本文对用于时间序列预测的人工神经网络(ann)自适应再训练过程进行了进一步改进。该方法的一个重要优点是模型可以周期性地适应非平稳环境的变化。再训练从以前版本的人工神经网络模型中使用的参数按比例减少的值开始。通常,要预测的时间序列和之前的输出的各种延迟版本被应用于人工神经网络的输入。此外,新开发的模型还使用往年的平均季节值作为输入,这些值是在某些特定的时间窗内为期望的目标变量获得的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A modified adaptive retraining procedure for data forecasting
The paper presents a further improvement of the adaptive retraining procedure of Artificial Neural Networks (ANNs) used for time series predictions. An important advantage of this approach is that the model is periodically adapted to the changes of the non-stationary environment. The retraining starts from proportionally reduced values of the parameters used in the previous version of the ANN model. As usual, variously delayed versions of the time series to be predicted and of the previous outputs are applied at the input of the ANN. In addition, the newly developed model also uses as inputs the averaged seasonal values from the previous years, obtained for the desired target variables in some specified time windows.
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