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Title:

Graph Neural Networks for Edge Signals: Orientation Equivariance and Invariance

Document type:
Konferenzbeitrag
Author(s):
Dominik Fuchsgruber, Tim Postuvan, Stephan Günnemann, Simon Geisler
Abstract:
Many applications in traffic, civil engineering, or electrical engineering revolve around edge-level signals. Such signals can be categorized as inherently directed, for example, the water flow in a pipe network, and undirected, like the diameter of a pipe. Topological methods model edge signals with inherent direction by representing them relative to a so-called orientation assigned to each edge. They can neither model undirected edge signals nor distinguish if an edge itself is directed or und...     »
Keywords:
GNI
Book / Congress title:
International Conference on Learning Representations 2025
Year:
2025
Month:
Apr
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