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Deep Learning Ensemble Based Model for Time Series Forecasting Across Multiple Applications

机译:基于深度学习的基于模型的多应用时间序列预测模型

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Time series prediction has been challenging topic in several application domains. In this paper, an ensemble of two top performing deep learning architectures across different applications such as fresh produce (FP) yield prediction, FP price prediction and crude oil price prediction is proposed. First, the input data is trained on an array of different machine learning architectures, the top two performers are then combined using a stacking ensemble. The top two performers across the three tested applications are found to be Attention CNN-LSTM (AC-LSTM) and Attention ConvLSTM (ACV-LSTM). Different ensemble techniques, mean prediction, Linear Regression (LR) and Support vector Regression (SVR), are then utilized to come up with the best prediction. An aggregated measure that combines the results of mean absolute error (MAE), mean squared error (MSE) and R2 coefficient of determination (R2) is used to evaluate model performance. The experiment results show that across the various examined applications, the proposed model which is a stacking ensemble of the AC-LSTM and ACV-LSTM using a linear SVR is the best performing based on the aggregated measure.
机译:时间序列预测在若干应用领域中一直具有具有挑战性的话题。在本文中,提出了一种在不同应用中执行深度学习架构的两个顶部的集合,例如新鲜生产(FP)产量预测,FP价格预测和原油价格预测。首先,输入数据在不同机器学习架构上的阵列上培训,然后使用堆叠集合组合前两个执行器。跨越三次测试应用的前两个表演者被发现注意CNN-LSTM(AC-LSTM)和注意力Convlstm(ACV-LSTM)。然后利用不同的集合技术,平均预测,线性回归(LR)和支持向量回归(SVR)来提出最佳预测。结合平均绝对误差(MAE)的结果,平均平方误差(MSE)和R的聚合度量 2 确定系数(r 2 )用于评估模型性能。实验结果表明,在各种检查应用中,使用线性SVR的AC-LSTM和ACV-LSTM的堆叠集合的所提出的模型是基于聚合测量的最佳性能。

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