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2D Convolutional Neural Markov Models for Spatiotemporal Sequence Forecasting

机译:2D卷积神经马尔可夫模型用于时空序列预测

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摘要

Recent approaches to time series forecasting, especially forecasting spatiotemporal sequences, have leveraged the approximation power of deep neural networks to model the complexity of such sequences, specifically approaches that are based on recurrent neural networks. Still, as spatiotemporal sequences that arise in the real world are noisy and chaotic, modeling approaches that utilize probabilistic temporal models, such as deep Markov models (DMMs), are favorable because of their ability to model uncertainty, increasing their robustness to noise. However, approaches based on DMMs do not maintain the spatial characteristics of spatiotemporal sequences, with most of the approaches converting the observed input into 1D data halfway through the model. To solve this, we propose a model that retains the spatial aspect of the target sequence with a DMM that consists of 2D convolutional neural networks. We then show the robustness of our method to data with large variance compared with naive forecast, vanilla DMM, and convolutional long short-term memory (LSTM) using synthetic data, even outperforming the DNN models over a longer forecast period. We also point out the limitations of our model when forecasting real-world precipitation data and the possible future work that can be done to address these limitations, along with additional future research potential.
机译:最近时间序列预测的方法,特别是预测时空序列,利用了深度神经网络的近似力来模拟这些序列的复杂性,特别是基于经常性神经网络的方法。尽管如此,由于现实世界中出现的时空序列是嘈杂的并且混乱的,所以利用概率的时间模型(如深马尔可夫模型(DMMS))的建模方法是有利的,因为它们能够模拟不确定性,将其稳健性提高到噪声。然而,基于DMMS的方法不会维持时尚序列的空间特征,大部分方法将观察到的输入转换为半模型中的1D数据。为了解决这一点,我们提出了一种模型,该模型将目标序列的空间方面与由2D卷积神经网络组成的DMM。然后,我们向使用合成数据的Naive预测,Vanilla DMM和卷积的长短期存储器(LSTM)相比,我们对具有大方差的数据的鲁棒性,甚至在更长的预测期内优于DNN模型。我们还指出了我们在预测现实世界降水数据和可能进行解决这些限制的未来工作时,我们的模型的局限性以及额外的未来研究潜力。

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