Graph Posterior Network: Bayesian Predictive Uncertainty for Node Classification
The interdependence between nodes in graphs is key to improve class predictions on nodes and utilized in approaches like Label Propagation (LP) or in Graph Neural Networks (GNN). Nonetheless, uncertainty estimation for non-independent node-level predictions is under-explored. In this work, we explor...
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Zusammenfassung: | The interdependence between nodes in graphs is key to improve class
predictions on nodes and utilized in approaches like Label Propagation (LP) or
in Graph Neural Networks (GNN). Nonetheless, uncertainty estimation for
non-independent node-level predictions is under-explored. In this work, we
explore uncertainty quantification for node classification in three ways: (1)
We derive three axioms explicitly characterizing the expected predictive
uncertainty behavior in homophilic attributed graphs. (2) We propose a new
model Graph Posterior Network (GPN) which explicitly performs Bayesian
posterior updates for predictions on interdependent nodes. GPN provably obeys
the proposed axioms. (3) We extensively evaluate GPN and a strong set of
baselines on semi-supervised node classification including detection of
anomalous features, and detection of left-out classes. GPN outperforms existing
approaches for uncertainty estimation in the experiments. |
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DOI: | 10.48550/arxiv.2110.14012 |