Result: Residual Attention Augmentation Graph Neural Network for Improved Node Classification

Title:
Residual Attention Augmentation Graph Neural Network for Improved Node Classification
Source:
Engineering, Technology & Applied Science Research. 14:13238-13242
Publisher Information:
Engineering, Technology & Applied Science Research, 2024.
Publication Year:
2024
Document Type:
Academic journal Article<br />Other literature type<br />Conference object
File Description:
application/pdf
ISSN:
1792-8036
2241-4487
DOI:
10.48084/etasr.6844
DOI:
10.60692/jmvp5-zrp86
DOI:
10.60692/05x96-a1y73
Rights:
CC BY
Accession Number:
edsair.doi.dedup.....549d89bcc40fbc1e75d51a433498006b
Database:
OpenAIRE

Further Information

Graph Neural Networks (GNNs) have emerged as a powerful tool for node representation learning within graph structures. However, designing a robust GNN architecture for node classification remains a challenge. This study introduces an efficient and straightforward Residual Attention Augmentation GNN (RAA-GNN) model, which incorporates an attention mechanism with skip connections to discerningly weigh node features and overcome the over-smoothing problem of GNNs. Additionally, a novel MixUp data augmentation method was developed to improve model training. The proposed approach was rigorously evaluated on various node classification benchmarks, encompassing both social and citation networks. The proposed method outperformed state-of-the-art techniques by achieving up to 1% accuracy improvement. Furthermore, when applied to the novel Twitch social network dataset, the proposed model yielded remarkably promising results. These findings provide valuable insights for researchers and practitioners working with graph-structured data.