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Forecast combinations of computational intelligence and linear models for the NN5 time series forecasting competition

机译:NN5时间序列预测竞赛的计算智能和线性模型的预测组合

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In this work we introduce the forecasting model with which we participated in the NN5 forecasting competition (the forecasting of 111 time series representing daily cash withdrawal amounts at ATM machines). The main idea of this model is to utilize the concept of forecast combination, which has proven to be an effective methodology in the forecasting literature. In the proposed system we attempted to follow a principled approach, and make use of some of the guidelines and concepts that are known in the forecasting literature to lead to superior performance. For example, we considered various previous comparison studies and time series competitions as guidance in determining which individual forecasting models to test (for possible inclusion in the forecast combination system). The final model ended up consisting of neural networks, Gaussian process regression, and linear models, combined by simple average. We also paid extra attention to the seasonality aspect, decomposing the seasonality into weekly (which is the strongest one), day of the month, and month of the year seasonality.
机译:在这项工作中,我们介绍了我们用于参加NN5预测竞赛的预测模型(预测111个时间序列,代表在ATM机上的每日现金提取量)。该模型的主要思想是利用预测组合的概念,这已被证明是预测文献中的一种有效方法。在提出的系统中,我们尝试遵循一种有原则的方法,并利用预测文献中已知的一些准则和概念来提高性能。例如,我们考虑了各种先前的比较研究和时间序列竞赛,以作为确定测试哪些单个预测模型的指导(可能包括在预测组合系统中)。最终的模型最终由神经网络,高斯过程回归和线性模型组成,并通过简单平均值进行组合。我们还特别注意季节性方面,将季节性分解为每周(最强的一个),每月的一天和每年的月份。

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