Hyperbolic Graph Neural Networks Under the Microscope: The Role of Geometry-Task Alignment
- URL: http://arxiv.org/abs/2602.01828v1
- Date: Mon, 02 Feb 2026 09:01:58 GMT
- Title: Hyperbolic Graph Neural Networks Under the Microscope: The Role of Geometry-Task Alignment
- Authors: Dionisia Naddeo, Jonas Linkerhägner, Nicola Toschi, Geri Skenderi, Veronica Lachi,
- Abstract summary: Hyperbolic Graph Neural Networks (HGNNs) have been widely adopted as a principled choice for representation learning on tree-like graphs.<n>We propose an additional condition of geometry-task alignment, i.e., whether the metric structure of the target follows that of the input graph.<n>We show that HGNNs consistently outperform Euclidean models under such alignment, while their advantage vanishes otherwise.
- Score: 5.116264249622881
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Many complex networks exhibit hyperbolic structural properties, making hyperbolic space a natural candidate for representing hierarchical and tree-like graphs with low distortion. Based on this observation, Hyperbolic Graph Neural Networks (HGNNs) have been widely adopted as a principled choice for representation learning on tree-like graphs. In this work, we question this paradigm by proposing an additional condition of geometry-task alignment, i.e., whether the metric structure of the target follows that of the input graph. We theoretically and empirically demonstrate the capability of HGNNs to recover low-distortion representations on two synthetic regression problems, and show that their geometric inductive bias becomes helpful when the problem requires preserving metric structure. Additionally, we evaluate HGNNs on the tasks of link prediction and node classification by jointly analyzing predictive performance and embedding distortion, revealing that only link prediction is geometry-aligned. Overall, our findings shift the focus from only asking "Is the graph hyperbolic?" to also questioning "Is the task aligned with hyperbolic geometry?", showing that HGNNs consistently outperform Euclidean models under such alignment, while their advantage vanishes otherwise.
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