SOTAVerified

Graph Generation

Graph Generation is an important research area with significant applications in drug and material designs.

Source: Graph Deconvolutional Generation

Papers

Showing 341350 of 712 papers

TitleStatusHype
MAGE: Model-Level Graph Neural Networks Explanations via Motif-based Graph Generation0
Scene Graph Generation Strategy with Co-occurrence Knowledge and Learnable Term Frequency0
MIDGARD: Self-Consistency Using Minimum Description Length for Structured Commonsense ReasoningCode0
Generative AI for Visualization: State of the Art and Future Directions0
Utilizing Graph Generation for Enhanced Domain Adaptive Object Detection0
ICST-DNET: An Interpretable Causal Spatio-Temporal Diffusion Network for Traffic Speed Prediction0
Accelerating Medical Knowledge Discovery through Automated Knowledge Graph Generation and Enrichment0
Tri-modal Confluence with Temporal Dynamics for Scene Graph Generation in Operating Rooms0
AUG: A New Dataset and An Efficient Model for Aerial Image Urban Scene Graph Generation0
Weakly-Supervised 3D Scene Graph Generation via Visual-Linguistic Assisted Pseudo-labelingCode0
Show:102550
← PrevPage 35 of 72Next →

Benchmark Results

#ModelMetricClaimedVerifiedStatus
1RNNStreetMover0.03Unverified
2GraphRNNStreetMover0.02Unverified
3GGT without CAStreetMover0.02Unverified
4GGTStreetMover0.02Unverified