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Spatio-temporal neural networks for space-time data modeling and relation discovery

机译:时空数据建模与关系发现时空神经网络

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We introduce a dynamical spatio-temporal model formalized as a recurrent neural network for modeling time series of spatial processes, i.e., series of observations sharing temporal and spatial dependencies. The model learns these dependencies through a structured latent dynamical component, while a decoder predicts the observations from the latent representations. We consider several variants of this model, corresponding to different prior hypothesis about the spatial relations between the series. The model is used for the tasks of forecasting and data imputation. It is evaluated and compared to state-of-the-art baselines, on a variety of forecasting and imputation problems representative of different application areas: epidemiology, geo-spatial statistics, and car traffic prediction. The experiments also show that this approach is able to learn relevant spatial relations without prior information.
机译:我们介绍了一种动态的时空模型,作为复发神经网络形式化,用于建模时间序列的空间过程,即分享时间和空间依赖的一系列观察。 该模型通过结构化的潜在动态组件来学习这些依赖性,而解码器预测来自潜在表示的观察。 我们考虑该模型的几种变体,对应于关于系列之间的空间关系的不同先前假设。 该模型用于预测和数据归档的任务。 它被评估并与最先进的基线进行了评估,以及代表不同应用领域的各种预测和归咎出问题:流行病学,地理空间统计和汽车交通预测。 实验还表明,没有先前信息,这种方法能够学习相关的空间关系。

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