4.6 Article

Bayesian Recurrent Neural Network Models for Forecasting and Quantifying Uncertainty in Spatial-Temporal Data

期刊

ENTROPY
卷 21, 期 2, 页码 -

出版社

MDPI
DOI: 10.3390/e21020184

关键词

recurrent neural network; Bayesian machine learning; nonlinear dynamical models; long-lead forecasting; spatial-temporal

资金

  1. U.S. National Science Foundation (NSF)
  2. U.S. Census Bureau under NSF [SES-1132031]
  3. NSF-Census Research Network (NCRN) program
  4. NSF [DMS-1811745]

向作者/读者索取更多资源

Recurrent neural networks (RNNs) are nonlinear dynamical models commonly used in the machine learning and dynamical systems literature to represent complex dynamical or sequential relationships between variables. Recently, as deep learning models have become more common, RNNs have been used to forecast increasingly complicated systems. Dynamical spatio-temporal processes represent a class of complex systems that can potentially benefit from these types of models. Although the RNN literature is expansive and highly developed, uncertainty quantification is often ignored. Even when considered, the uncertainty is generally quantified without the use of a rigorous framework, such as a fully Bayesian setting. Here we attempt to quantify uncertainty in a more formal framework while maintaining the forecast accuracy that makes these models appealing, by presenting a Bayesian RNN model for nonlinear spatio-temporal forecasting. Additionally, we make simple modifications to the basic RNN to help accommodate the unique nature of nonlinear spatio-temporal data. The proposed model is applied to a Lorenz simulation and two real-world nonlinear spatio-temporal forecasting applications.

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