Edge-Labeling Graph Neural Network for Few-Shot Learning
Korea Advanced Institute of Science and Technology · Kao Corporation (Japan) · +3 more institutions
Abstract
In this paper, we propose a novel edge-labeling graph neural network (EGNN), which adapts a deep neural network on the edge-labeling graph, for few-shot learning. The previous graph neural network (GNN) approaches in few-shot learning have been based on the node-labeling framework, which implicitly models the intra-cluster similarity and the inter-cluster dissimilarity. In contrast, the proposed EGNN learns to predict the edge-labels rather than the node-labels on the graph that enables the evolution of an explicit clustering by iteratively updating the edge-labels with direct exploitation of both intra-cluster similarity and the inter-cluster dissimilarity. It is also well suited for performing on various…
Citation impact
- FWCI
- 42.51
- Percentile
- 100%
- References
- 95
Authors
4- JKJongmin KimCorresponding
Korea Advanced Institute of Science and Technology, Kao Corporation (Japan), Kootenay Association for Science & Technology, Brain (Germany)
- TKTaesup Kim
Kao Corporation (Japan), Brain (Germany), Université de Montréal
- SKSungwoong Kim
Kao Corporation (Japan), Brain (Germany)
- CDChang D. Yoo
Korea Advanced Institute of Science and Technology, Kootenay Association for Science & Technology
Topics & keywords
- Computer science
- Artificial intelligence
- Graph
- Enhanced Data Rates for GSM Evolution
- Cluster analysis
- Pattern recognition (psychology)
- Inference
- Benchmark (surveying)