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Autori principali: Cuzin-Rambaud, Valentin, Lefort, Mathieu, Cazabet, Rémy
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.20257
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author Cuzin-Rambaud, Valentin
Lefort, Mathieu
Cazabet, Rémy
author_facet Cuzin-Rambaud, Valentin
Lefort, Mathieu
Cazabet, Rémy
contents Recently, instance discrimination models have emerged as a major solution for self-supervised learning. Having already demonstrated its effectiveness in the image domain, instance discrimination learning is now proving equally convincing in the graph domain, in particular for node classification. However, fewer contributions have tackled the link prediction task. In this contribution, we propose to adapt existing methods to this context. We first provide a rigorous evaluation of existing self-supervised models in the field of link prediction, showing that the main performance depends on the augmentation process (like in computer vision). We then propose a new structural augmentation based on the community structure that is relevant for link prediction. Our main contribution introduces two new models, L-GRACE and L-BGRL, based on link representations instead of node representations, which improve the performance of the existing methods, especially on unattributed graphs, and we show that they perform on par with the state of the art, both in supervised and self-supervised contexts.
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id arxiv_https___arxiv_org_abs_2605_20257
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Instance Discrimination for Link Prediction
Cuzin-Rambaud, Valentin
Lefort, Mathieu
Cazabet, Rémy
Machine Learning
Artificial Intelligence
Recently, instance discrimination models have emerged as a major solution for self-supervised learning. Having already demonstrated its effectiveness in the image domain, instance discrimination learning is now proving equally convincing in the graph domain, in particular for node classification. However, fewer contributions have tackled the link prediction task. In this contribution, we propose to adapt existing methods to this context. We first provide a rigorous evaluation of existing self-supervised models in the field of link prediction, showing that the main performance depends on the augmentation process (like in computer vision). We then propose a new structural augmentation based on the community structure that is relevant for link prediction. Our main contribution introduces two new models, L-GRACE and L-BGRL, based on link representations instead of node representations, which improve the performance of the existing methods, especially on unattributed graphs, and we show that they perform on par with the state of the art, both in supervised and self-supervised contexts.
title Instance Discrimination for Link Prediction
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2605.20257