dc.contributor.author | Cini, Andrea | |
dc.contributor.author | Marisca, Ivan | |
dc.contributor.author | Bianchi, Filippo Maria | |
dc.contributor.author | Alippi, Cesare | |
dc.date.accessioned | 2023-04-17T08:09:22Z | |
dc.date.available | 2023-04-17T08:09:22Z | |
dc.date.issued | 2023 | |
dc.description.abstract | Neural forecasting of spatiotemporal time series drives both
research and industrial innovation in several relevant application domains. Graph neural networks (GNNs) are often
the core component of the forecasting architecture. However,
in most spatiotemporal GNNs, the computational complexity
scales up to a quadratic factor with the length of the sequence
times the number of links in the graph, hence hindering the
application of these models to large graphs and long temporal
sequences. While methods to improve scalability have been
proposed in the context of static graphs, few research efforts
have been devoted to the spatiotemporal case. To fill this gap,
we propose a scalable architecture that exploits an efficient
encoding of both temporal and spatial dynamics. In particular, we use a randomized recurrent neural network to embed
the history of the input time series into high-dimensional state
representations encompassing multi-scale temporal dynamics. Such representations are then propagated along the spatial
dimension using different powers of the graph adjacency matrix to generate node embeddings characterized by a rich pool
of spatiotemporal features. The resulting node embeddings
can be efficiently pre-computed in an unsupervised manner,
before being fed to a feed-forward decoder that learns to map
the multi-scale spatiotemporal representations to predictions.
The training procedure can then be parallelized node-wise by
sampling the node embeddings without breaking any dependency, thus enabling scalability to large networks. Empirical
results on relevant datasets show that our approach achieves
results competitive with the state of the art, while dramatically reducing the computational burden. | en_US |
dc.description | Source at <a href=https://ojs.aaai.org/index.php/AAAI/index>https://ojs.aaai.org/index.php/AAAI/index</a>. | en_US |
dc.identifier.citation | Cini, Marisca, Bianchi, Alippi. Scalable Spatiotemporal Graph Neural Networks. Proceedings of the AAAI Conference on Artificial Intelligence. 2023 | en_US |
dc.identifier.cristinID | FRIDAID 2081785 | |
dc.identifier.issn | 2159-5399 | |
dc.identifier.issn | 2374-3468 | |
dc.identifier.uri | https://hdl.handle.net/10037/28994 | |
dc.language.iso | eng | en_US |
dc.publisher | Association for the Advancement of Artificial Intelligence | en_US |
dc.relation.journal | Proceedings of the AAAI Conference on Artificial Intelligence | |
dc.rights.accessRights | openAccess | en_US |
dc.rights.holder | Copyright 2023 The Author(s) | en_US |
dc.rights.uri | https://creativecommons.org/licenses/by/4.0 | en_US |
dc.rights | Attribution 4.0 International (CC BY 4.0) | en_US |
dc.title | Scalable Spatiotemporal Graph Neural Networks | en_US |
dc.type.version | submittedVersion | en_US |
dc.type | Journal article | en_US |
dc.type | Tidsskriftartikkel | en_US |