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Retail Time Series Prediction Based on EMD and Deep Learning

机译:基于EMD和深度学习的零售时间序列预测。

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The paper presents a new method based on EMD and deep learning. The method transforms the retail time series prediction problem into a signal analysis processing problem by using “divide and conquer” concept. It can decompose the source time series and build the suitable deep learning models for each sub-sequence by using the suitable retail time series feature. The experiment shows that the effect of the method performs better than those traditional machine leaning methods and single deep learning method on MAE and RMSE indicators in the retail time series prediction task. The method can be using to conduct the retail business behavior for a better sales result.
机译:本文提出了一种基于EMD和深度学习的新方法。该方法通过使用“分而治之”的概念将零售时间序列预测问题转化为信号分析处理问题。它可以分解源时间序列,并通过使用合适的零售时间序列功能为每个子序列构建合适的深度学习模型。实验表明,该方法对零售时间序列预测任务中的MAE和RMSE指标的效果优于传统的机器学习方法和单一深度学习方法。该方法可用于进行零售业务行为,以获得更好的销售结果。

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