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Deep Gaussian Markov Random Fields for Graph-Structured Dynamical Systems
- Source :
- Advances in Neural Information Processing Systems 36, 2023
- Publication Year :
- 2023
-
Abstract
- Probabilistic inference in high-dimensional state-space models is computationally challenging. For many spatiotemporal systems, however, prior knowledge about the dependency structure of state variables is available. We leverage this structure to develop a computationally efficient approach to state estimation and learning in graph-structured state-space models with (partially) unknown dynamics and limited historical data. Building on recent methods that combine ideas from deep learning with principled inference in Gaussian Markov random fields (GMRF), we reformulate graph-structured state-space models as Deep GMRFs defined by simple spatial and temporal graph layers. This results in a flexible spatiotemporal prior that can be learned efficiently from a single time sequence via variational inference. Under linear Gaussian assumptions, we retain a closed-form posterior, which can be sampled efficiently using the conjugate gradient method, scaling favourably compared to classical Kalman filter based approaches<br />Comment: NeurIPS 2023; camera-ready version
- Subjects :
- Computer Science - Machine Learning
Subjects
Details
- Database :
- arXiv
- Journal :
- Advances in Neural Information Processing Systems 36, 2023
- Publication Type :
- Report
- Accession number :
- edsarx.2306.08445
- Document Type :
- Working Paper