核心概念
The authors explore various fusion strategies for representation learning in multiplex graphs, aiming to enhance node embeddings through innovative approaches.
摘要
Representation learning in multiplex graphs involves exploring diverse information fusion schemes to improve node embeddings. The study evaluates different fusion methods and their impact on downstream tasks across various datasets.
The research focuses on the importance of leveraging the unique features of multiplex networks effectively. Various fusion strategies are proposed and evaluated to enhance representation learning for nodes in multiplex networks. The study aims to advance understanding and development of robust, efficient, and versatile methods for multiplex network representation learning.
Key points include:
- Multiplex graphs offer richer information than homogeneous networks.
- Existing methods focus on homogeneous graphs, leaving a gap in leveraging multiplex networks.
- Different fusion strategies are explored at graph, GNN, and embedding levels.
- Evaluation is conducted across multiple datasets to assess performance in node classification, clustering, and similarity search tasks.
統計資料
ACM dataset: 3 classes with varying performance across layers (PAP vs. PSP).
Amazon dataset: Node features outperform layer information significantly.
Freebase dataset: Learnable graph-level fusion improves performance.
IMDB dataset: Larger MAM layer performs worse than MDM layer.
Cora & CiteSeer datasets: Added KNN layers achieve similar performance to node features.