Conference item : Poster
Neural spacetimes for DAG representation learning
- Abstract:
- We propose a class of trainable deep learning-based geometries called Neural SpaceTimes (NSTs), which can universally represent nodes in weighted Directed Acyclic Graphs (DAGs) as events in a spacetime manifold. While most works in the literature focus on undirected graph representation learning or causality embedding separately, our differentiable geometry can encode both graph edge weights in its spatial dimensions and causality in the form of edge directionality in its temporal dimensions. We use a product manifold that combines a quasimetric (for space) and a partial order (for time). NSTs are implemented as three neural networks trained in an end-to-end manner: an embedding network, which learns to optimize the location of nodes as events in the spacetime manifold, and two other networks that optimize the space and time geometries in parallel, which we call a neural (quasi-)metric and a neural partial order, respectively. The latter two networks leverage recent ideas at the intersection of fractal geometry and deep learning to shape the geometry of the representation space in a data-driven fashion, unlike other works in the literature that use fixed spacetime manifolds such as Minkowski space or De Sitter space to embed DAGs. Our main theoretical guarantee is a universal embedding theorem, showing that any k-point DAG can be embedded into an NST with 1 + O(log(k)) distortion while exactly preserving its causal structure. The total number of parameters defining the NST is sub-cubic in k and linear in the width of the DAG. If the DAG has a planar Hasse diagram, this is improved to O(log(k) + 2) spatial and 2 temporal dimensions. We validate our framework computationally with synthetic weighted DAGs and real-world network embeddings; in both cases, the NSTs achieve lower embedding distortions than their counterparts using fixed spacetime geometries.
- Publication status:
- Published
- Peer review status:
- Peer reviewed
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(Preview, Version of record, pdf, 781.5KB, Terms of use)
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- Publication website:
- https://openreview.net/forum?id=skGSOcrIj7
Authors
+ Natural Sciences and Engineering Research Council of Canada
More from this funder
- Funder identifier:
- https://ror.org/01h531d29
- Funding agency for:
- Kratsios, A
- Grant:
- RGPIN-2023-04482
- DGECR-2023-00230
+ Engineering and Physical Sciences Research Council
More from this funder
- Funder identifier:
- https://ror.org/0439y7842
- Funding agency for:
- Dong, X
- Bronstein, MM
- Grant:
- EP/T023333/1
- EP/X040062/1
- EP/Y028872/1
- Publisher:
- OpenReview
- Host title:
- Proceedings of the 13th International Conference on Learning Representations (ICLR 2025)
- Article number:
- 8450
- Publication date:
- 2025-01-22
- Acceptance date:
- 2025-01-22
- Event title:
- 13th International Conference on Learning Representations (ICLR 2025)
- Event location:
- Singapore
- Event website:
- https://iclr.cc/Conferences/2025
- Event start date:
- 2025-04-24
- Event end date:
- 2025-04-28
- Language:
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English
- Subtype:
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Poster
- Pubs id:
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2279544
- UUID:
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uuid_a21d42e1-0042-489f-856a-aaf2862075b8
- Local pid:
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pubs:2279544
- Deposit date:
-
2026-01-17
- ARK identifier:
Terms of use
- Copyright holder:
- Sáez De Ocáriz Borde et al.
- Copyright date:
- 2025
- Rights statement:
- © The Authors 2025. Licensed under Creative Commons Attribution 4.0 International.
- Licence:
- CC Attribution (CC BY)
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