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A feature-based hybrid ARIMA-ANN model for univariate time series forecasting

机译:基于特征的混合ARIMA-ANN模型,用于单变量时间序列预测

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摘要

High prediction accuracies at time series modeling and forecasting is of the utmost importance for a variety of application domains. Many methods have been proposed in the literature to improve time series forecasting accuracy. Those which focus on univariate time series forecasting methods use only the values in the prior time steps to predict the next value. In this study in addition to the historical values, it is aimed to increase the forecasting performance by using extra statistical and structural features which summarize characteristics of the time series. Feature importance scores are determined by gradient boosting trees (GBT). Features with the highest importance score are given as explanatory additional variable to the hybrid ARIMA-ANN model. The evaluation of the developed method is performed on four different publicly available datasets. Our experimental results show higher accuracy performance for the proposed method as compared to the currently well-accepted methods.
机译:时间序列建模和预测的高预测精度对于各种应用域来说至关重要。 在文献中提出了许多方法,以提高时间序列预测精度。 关注单变量时间序列预测方法的那些仅使用前一时间步骤中的值来预测下一个值。 在本研究外,除了历史价值之外,它旨在通过使用额外的统计和结构特征来提高预测性能,这些功能总结了时间序列的特征。 特征重要性分数由渐变升压树(GBT)确定。 具有最高分数的特征是对混合ARIMA-ANN模型的解释附加变量。 对开发方法的评估是在四个不同的公共可用数据集上执行的。 与目前良好的方法相比,我们的实验结果表明了所提出的方法的准确性表现。

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