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Building Autocorrelation-Aware Representations for Fine-Scale Spatiotemporal Prediction

机译:构建自相关感知的细微时空预测的表示

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Many scientific prediction problems have spatiotemporal data-and modeling-related challenges in handling complex variations in space and time using only sparse and unevenly distributed observations. This paper presents a novel deep learning architecture, Deep learning predictions for LocATion-dependent Time-sEries data (DeepLATTE), that explicitly incorporates theories of spatial statistics into neural networks to addresses these challenges. In addition to a feature selection module and a spatiotemporal learning module, DeepLATTE contains an autocorrelation-guided semi-supervised learning strategy to enforce both local autocorrelation patterns and global autocorrelation trends of the predictions in the learned spatiotemporal embedding space to be consistent with the observed data, overcoming the limitation of sparse and unevenly distributed observations. During the training process, both supervised and semi-supervised losses guide the updates of the entire network to: 1) prevent overfitting, 2) refine feature selection, 3) learn useful spatiotemporal representations, and 4) improve overall prediction. We conduct a demonstration of DeepLATTE using publicly available data for an important public health topic, air quality prediction, in a well-studied, complex physical environment - Los Angeles. The experiment demonstrates that the proposed approach provides accurate fine-spatial-scale air quality predictions and reveals the critical environmental factors affecting the results.
机译:许多科学预测问题具有时尚的数据和建模相关的挑战,在使用稀疏和不均匀的分布观察中处理空间和时间的复杂变化。本文提出了一种新颖的深度学习架构,对位置依赖的时间序列数据(DEEPLatte)的深度学习预测,明确地将空间统计的理论纳入神经网络以解决这些挑战。除了特征选择模块和时空学习模块之外,Deeplatte还包含一个自相关引导的半监控学习策略,以强制执行学习的时空嵌入空间中的预测的本地自相关模式和全局自相关趋势,以与观察到的数据一致,克服稀疏和不均匀分布的观测的限制。在培训过程中,监督和半监督损失都指导整个网络的更新:1)防止过度装备,2)优化特征选择,3)学习有用的时空表示,4)改善整体预测。我们使用公共公共卫生主题,空气质量预测,在学习,复杂的物理环境中,使用公共空气质量预测进行了德普拉特的示范。该实验表明,该方法提供了准确的细空间尺度空气质量预测,并揭示了影响结果的关键环境因素。

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