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HypeBoy: Generative Self-Supervised Representation Learning on Hypergraphs

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Hypergraphs are marked by complex topology, expressing higher-order interactions among multiple nodes with hyperedges, and better capturing the topology is essential for effective representation learning. Recent advances in generative self-supervised learning (SSL) suggest that hypergraph neural networks learned from generative self supervision have the potential to effectively encode the complex hypergraph topology. Designing a generative SSL strategy for hypergraphs, however, is not straightforward. Questions remain with regard to its generative SSL task, connection to downstream tasks, and empirical properties of learned representations. In light of the promises and challenges, we propose a novel generative SSL strategy for hypergraphs. We first formulate a generative SSL task on hypergraphs, hyperedge filling, and highlight its theoretical connection to node classification. Based on the generative SSL task, we propose a hypergraph SSL method, HypeBoy. HypeBoy learns effective general-purpose hypergraph representations, outperforming 16 baseline methods across 11 benchmark datasets.

Sunwoo Kim, Shinhwan Kang, Fanchen Bu, Soo Yong Lee, Jaemin Yoo, Kijung Shin• 2024

Related benchmarks

TaskDatasetResultRank
Node ClassificationCiteseer
Accuracy61.98
1037
Node ClassificationCora
Accuracy32.73
134
Node ClassificationCora HOMO. (test)
Mean Accuracy80.04
30
Node ClassificationCora HET. (test)
Accuracy68.39
30
Node ClassificationCiteseer HOMO. (test)
Mean Accuracy70.98
23
Hyperedge predictionCora
Accuracy67.38
18
Hyperedge predictionCiteseer
Accuracy74.56
18
Node ClassificationDBLP HOMO (test)
Mean Accuracy91.26
15
Node ClassificationPubmed HOMO (test)
Mean Accuracy87.94
15
Node ClassificationPubmed HET. (test)
Mean Accuracy85.29
15
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