Paper
8 November 2024 Generative growing hypergraph leaning
Tongtong Zhang, Yuanxiang Li, Xian Wei
Author Affiliations +
Proceedings Volume 13416, Fourth International Conference on Advanced Algorithms and Neural Networks (AANN 2024); 134161H (2024) https://doi.org/10.1117/12.3049978
Event: 2024 4th International Conference on Advanced Algorithms and Neural Networks, 2024, Qingdao, China
Abstract
The majority of existing studies on dynamic hypergraphs focus on hypergraphs with a constant size but only dynamic hyperedges, yet numerous scenarios necessitate the understanding of a hypergraph's growth. This paper introduces the Variational Growing Hypergraph Learning (VGHL) method, which addresses the limitations of current studies that only consider hypergraphs with fixed sizes and dynamic hyperedges. The VGHL method is designed to simultaneously capture the evolving structure of an existing hypergraph and accommodate the integration of new nodes. The technique involves transforming hypergraph snapshots into line graphs and then adjusting the variational lower bound to facilitate the construction of a hypergraph sequence, which is crucial for downstream classification tasks. The paper demonstrates the efficacy of the VGHL method through experiments on various benchmark datasets, highlighting its potential for semi-supervised classification.
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Tongtong Zhang, Yuanxiang Li, and Xian Wei "Generative growing hypergraph leaning", Proc. SPIE 13416, Fourth International Conference on Advanced Algorithms and Neural Networks (AANN 2024), 134161H (8 November 2024); https://doi.org/10.1117/12.3049978
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KEYWORDS
Matrices

Associative arrays

Data modeling

Modeling

Neural networks

Convolution

Feature extraction

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