Conference Proceedings

VALID CONFORMAL PREDICTION FOR DYNAMIC GNNS

E Davis, I Gallagher, DJ Lawson, P Rubin-Delanchy

13th International Conference on Learning Representations Iclr 2025 | ICLR | Published : 2025

Abstract

Dynamic graphs provide a flexible data abstraction for modelling many sorts of real-world systems, such as transport, trade, and social networks. Graph neural networks (GNNs) are powerful tools allowing for different kinds of prediction and inference on these systems, but getting a handle on uncertainty, especially in dynamic settings, is a challenging problem. In this work we propose to use a dynamic graph representation known in the tensor literature as the unfolding, to achieve valid prediction sets via conformal prediction. This representation, a simple graph, can be input to any standard GNN and does not require any modification to existing GNN architectures or conformal prediction rout..

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University of Melbourne Researchers

Grants

Awarded by UK Research and Innovation


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