Back to Search Start Over

Multi-semantic hypergraph neural network for effective few-shot learning.

Authors :
Chen, Hao
Li, Linyan
Hu, Fuyuan
Lyu, Fan
Zhao, Liuqing
Huang, Kaizhu
Feng, Wei
Xia, Zhenping
Source :
Pattern Recognition. Oct2023, Vol. 142, pN.PAG-N.PAG. 1p.
Publication Year :
2023

Abstract

• Multi-semantic hypergraph explore higher-order relationships among few samples. • Orthogonalized mapping function helps to obtain rich multi-semantic information. • Multi-semantic distribution information improve the rationality of hypergraphs. • Hypergraph and Multi-Semantic Distribution Information with node-edge message passing. Recently, Graph-based Few-Shot Learning (FSL) methods exhibit good generalization by mining relations among few samples with Graph Neural Networks. However, most Graph-based FSL methods consider only binary relations and ignore the multi-semantic information of the global context knowledge. We propose a framework of Multi-Semantic Hypergraph for FSL (MSH-FSL) to explore complex latent high-order multi-semantic relations among the few samples. By mining the complex relationship structure of multi-node and multi-semantics, more refined feature representation can be learned, which yields better classification robustness. Specifically, we first construct a novel Multi-Semantic Hypergraph by obtaining associated instances with different semantic features via orthogonal mapping. With the constructed hypergraph, we then develop the Hyergraph Neural Network along with a novel multi-generation hypergraph message passing so as to better leverage the complex latent semantic relations among samples. Finally, after a number of generations, the hyper-node representations embedded in the learned hypergraph become more accurate for obtaining few-shot prediction. In the 5-way 1-shot task of ResNet-12 on mini-Imagenet dataset, the multi-semantic hypergraph outperforms single-semantic graph by 3.1%, and with the proposed semantic-distribution message passing, the improvement can further reach 6.1%. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00313203
Volume :
142
Database :
Academic Search Index
Journal :
Pattern Recognition
Publication Type :
Academic Journal
Accession number :
164259630
Full Text :
https://doi.org/10.1016/j.patcog.2023.109677