מושגי ליבה
The author proposes the Dynamic Impact Single-Event Embedding Model (DISEE) to reconcile impact quantification with graph representation learning in single-event networks.
תקציר
The content discusses the importance of understanding scientific research dynamics through citation networks. It introduces the DISEE model, which combines impact characterization with latent distance modeling for accurate link prediction and impact assessment in citation networks.
Key points:
- Importance of understanding scientific research dynamics.
- Introduction of the DISEE model for reconciling impact quantification and graph representation learning.
- Discussion on single-event networks and their analysis through citation networks.
- Detailed explanation of the DISEE model's components and its application in link prediction tasks.
- Comparison with traditional models and baselines to showcase the effectiveness of DISEE.
- Visualization of impact functions and embedding spaces for target papers over time.
סטטיסטיקה
Proceedings of the 27th International Conference on Artificial Intelligence and Statistics (AISTATS) 2024, Valencia, Spain.
Total number of links: 160,039 in Artificial network.
Machine Learning network: 22,540 target nodes, 148,703 source nodes, 526,226 total links.
ציטוטים
"Understanding the structure and dynamics of scientific research has become an important area of research." - Content
"Citation networks are dynamic structures that require advanced modeling approaches." - Content