SOTAVerified

Graph Representation Learning

The goal of Graph Representation Learning is to construct a set of features (‘embeddings’) representing the structure of the graph and the data thereon. We can distinguish among Node-wise embeddings, representing each node of the graph, Edge-wise embeddings, representing each edge in the graph, and Graph-wise embeddings representing the graph as a whole.

Source: SIGN: Scalable Inception Graph Neural Networks

Papers

Showing 376400 of 982 papers

TitleStatusHype
Graph Anomaly Detection in Time Series: A Survey0
On Understanding and Mitigating the Dimensional Collapse of Graph Contrastive Learning: a Non-Maximum Removal Approach0
Distributed Representations of Entities in Open-World Knowledge Graphs0
Generating Counterfactual Hard Negative Samples for Graph Contrastive Learning0
Graph Context Encoder: Graph Feature Inpainting for Graph Generation and Self-supervised Pretraining0
Decoupling feature propagation from the design of graph auto-encoders0
Contrastive Representation Learning Based on Multiple Node-centered Subgraphs0
A Survey on Malware Detection with Graph Representation Learning0
Generalized Laplacian Positional Encoding for Graph Representation Learning0
Contrastive Graph Representation Learning with Adversarial Cross-view Reconstruction and Information Bottleneck0
A General-Purpose Transferable Predictor for Neural Architecture Search0
A Benchmark on Directed Graph Representation Learning in Hardware Designs0
Graph Representation Learning with Diffusion Generative Models0
Graph Learning for Combinatorial Optimization: A Survey of State-of-the-Art0
Deep Active Learning based Experimental Design to Uncover Synergistic Genetic Interactions for Host Targeted Therapeutics0
Graph Self-Contrast Representation Learning0
GCN-SE: Attention as Explainability for Node Classification in Dynamic Graphs0
Contrastive Brain Network Learning via Hierarchical Signed Graph Pooling Model0
GCN-BMP: Investigating Graph Representation Learning for DDI Prediction Task0
Deep Graph Generators: A Survey0
A Survey on Heterogeneous Graph Embedding: Methods, Techniques, Applications and Sources0
G5: A Universal GRAPH-BERT for Graph-to-Graph Transfer and Apocalypse Learning0
Consensus Graph Representation Learning for Better Grounded Image Captioning0
From random-walks to graph-sprints: a low-latency node embedding framework on continuous-time dynamic graphs0
A Survey on Graph Representation Learning Methods0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Pi-net-linearError (mm)0.47Unverified