TY - GEN
T1 - Tensorized Hypergraph Neural Networks
AU - Wang, Maolin
AU - Zhen, Yaoming
AU - Pan, Yu
AU - Zhao, Yao
AU - Zhuang, Chenyi
AU - Xu, Zenglin
AU - Guo, Ruocheng
AU - Zhao, Xiangyu
N1 - Publisher Copyright:
Copyright © 2024 by SIAM.
PY - 2024
Y1 - 2024
N2 - Hypergraph neural networks (HGNN) have recently become attractive and received significant attention due to their excellent performance in various domains. However, most existing HGNNs rely on first-order approximations of hypergraph connectivity patterns, which ignores important high-order information. To address this issue, we propose a novel adjacency-tensor-based Tensorized Hypergraph Neural Network (THNN). THNN is a faithful hypergraph modeling framework through high-order outer product feature message passing and is a natural tensor extension of the adjacency-matrix-based graph neural networks. The proposed THNN is equivalent to a high-order polynomial regression scheme, which enables THNN with the ability to efficiently extract high-order information from uniform hypergraphs. Moreover, in consideration of the exponential complexity of directly processing high-order outer product features, we propose using a partially symmetric CP decomposition approach to reduce model complexity to a linear degree. Additionally, we propose two simple yet effective extensions of our method for non-uniform hypergraphs commonly found in real-world applications. Results from experiments on two widely used hypergraph datasets for 3-D visual object classification show the model's promising performance.
AB - Hypergraph neural networks (HGNN) have recently become attractive and received significant attention due to their excellent performance in various domains. However, most existing HGNNs rely on first-order approximations of hypergraph connectivity patterns, which ignores important high-order information. To address this issue, we propose a novel adjacency-tensor-based Tensorized Hypergraph Neural Network (THNN). THNN is a faithful hypergraph modeling framework through high-order outer product feature message passing and is a natural tensor extension of the adjacency-matrix-based graph neural networks. The proposed THNN is equivalent to a high-order polynomial regression scheme, which enables THNN with the ability to efficiently extract high-order information from uniform hypergraphs. Moreover, in consideration of the exponential complexity of directly processing high-order outer product features, we propose using a partially symmetric CP decomposition approach to reduce model complexity to a linear degree. Additionally, we propose two simple yet effective extensions of our method for non-uniform hypergraphs commonly found in real-world applications. Results from experiments on two widely used hypergraph datasets for 3-D visual object classification show the model's promising performance.
KW - graph neural networks
KW - Hypergraph
KW - tensor decomposition
KW - tensorial neural networks
UR - https://www.scopus.com/pages/publications/85193482972
M3 - 会议稿件
AN - SCOPUS:85193482972
T3 - Proceedings of the 2024 SIAM International Conference on Data Mining, SDM 2024
SP - 127
EP - 135
BT - Proceedings of the 2024 SIAM International Conference on Data Mining, SDM 2024
A2 - Shekhar, Shashi
A2 - Papalexakis, Vagelis
A2 - Gao, Jing
A2 - Jiang, Zhe
A2 - Riondato, Matteo
PB - Society for Industrial and Applied Mathematics Publications
T2 - 2024 SIAM International Conference on Data Mining, SDM 2024
Y2 - 18 April 2024 through 20 April 2024
ER -