时间序列预测的机器学习工具

K. Ramirez-Amaro, J. C. Chimal-Eguía
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引用次数: 5

摘要

本文提出了一种新的时间序列数据的输入表示和一种新的学习方法。输入数据表示是基于将时间序列的图像轴分割成方框所获得的信息。然后,将这些新信息以一种新的学习技术实现,通过概率机制将这种学习应用于感兴趣的预测问题。结果表明,采用本文提出的方法可以获得足够准确的预测结果。
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Machine Learning Tools to Time Series Forecasting
In this paper a new input representation of the data of the time series and a new learning approach is presented. The input data representation is based on the information obtained by the division of image axis of the time series into boxes. Then, this new information is implemented in a new learning technique which through probabilistic mechanism this learning could be applied to the interesting forecasting problem. The results indicate that using the methodology proposed in this article it is possible to obtain forecasting results with good enough accuracy.
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