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Forecasting Monthly Sales Retail Time Series: A Case Study

机译:预测每月销售零售时间序列:一个案例研究

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This paper presents a case study concerning the forecasting of monthly retail time series recorded by the US Census Bureau from 1992 to 2016. The modeling problem is tackled in two steps. First, original time series are de-trended by using a moving windows averaging approach. Subsequently, the residual time series are modeled by Non-linear Auto-Regressive (NAR) models, by using both Neuro-Fuzzy and Feed-Forward Neural Networks approaches. The goodness of the forecasting models, is objectively assessed by calculating the bias, the mae and the rmse errors. Finally, the model skill index is calculated considering the traditional persistent model as reference. Results show that there is a convenience in using the proposed approaches, compared to the reference one.
机译:本文介绍了一个有关美国人口普查局1992年至2016年记录的每月零售时间序列预测的案例研究。建模问题分为两个步骤解决。首先,通过使用移动窗口平均方法来对原始时间序列进行反趋势化。随后,通过使用神经模糊和前馈神经网络方法,通过非线性自回归(NAR)模型对剩余时间序列进行建模。通过计算偏差,mae和rmse误差来客观地评估预测模型的优劣。最后,以传统的持久性模型为参考来计算模型技能指数。结果表明,与参考方法相比,使用建议的方法是很方便的。

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