학술논문

Bidirectional Gated Edge-Labeling Graph Recurrent Neural Network for Few-Shot Learning
Document Type
Periodical
Source
IEEE Transactions on Cognitive and Developmental Systems IEEE Trans. Cogn. Dev. Syst. Cognitive and Developmental Systems, IEEE Transactions on. 15(2):855-864 Jun, 2023
Subject
Computing and Processing
Signal Processing and Analysis
Task analysis
Convolution
Logic gates
Recurrent neural networks
Feature extraction
Training
Generators
Bidirectional gated graph recurrent neural network (bi-GGRNN)
few-shot learning (FSL)
meta learning
Language
ISSN
2379-8920
2379-8939
Abstract
Many existing graph-based methods for few-shot learning problem focused on either separately learning node features or edge features or simply utilizing graph convolution, failing to fully retain or exploit graph structure information. In this article, we proposed a bidirectional gated edge-labeling graph recurrent neural network (bi-GEGRN) which adopts both edge-labeling graph framework and graph convolution operation in the meta-learning scheme. We modified the gated graph neural network to adjacency matrix generator-based bidirectional formation which is able to process sequence graph data in two directions and then organically combined it with edge-labeled graph framework to cyclically upgrade features meanwhile aggregate graph structure information. In view of the excellent aggregating capability of graph convolution and good performance of the alternately cyclic update strategy, bi-GEGRN improves the information transferring between tasks in meta learning. To verify the validity and universality on both supervised and semi-supervised regimes, extensive experiments were conducted on three few-shot benchmark data sets and bi-GEGRN showed a good performance.