SOTAVerified

Graph Classification

Graph Classification is a task that involves classifying a graph-structured data into different classes or categories. Graphs are a powerful way to represent relationships and interactions between different entities, and graph classification can be applied to a wide range of applications, such as social network analysis, bioinformatics, and recommendation systems. In graph classification, the input is a graph, and the goal is to learn a classifier that can accurately predict the class of the graph.

( Image credit: Hierarchical Graph Pooling with Structure Learning )

Papers

Showing 5175 of 927 papers

TitleStatusHype
Enhancing Graph Transformers with Hierarchical Distance Structural EncodingCode1
Transitivity-Preserving Graph Representation Learning for Bridging Local Connectivity and Role-based SimilarityCode1
S-Mixup: Structural Mixup for Graph Neural NetworksCode1
Modeling Graphs Beyond Hyperbolic: Graph Neural Networks in Symmetric Positive Definite MatricesCode1
Path Neural Networks: Expressive and Accurate Graph Neural NetworksCode1
CIN++: Enhancing Topological Message PassingCode1
Learning Probabilistic Symmetrization for Architecture Agnostic EquivarianceCode1
Graph Inductive Biases in Transformers without Message PassingCode1
DRew: Dynamically Rewired Message Passing with DelayCode1
Exphormer: Sparse Transformers for GraphsCode1
Masked Relation Learning for DeepFake DetectionCode1
Multiresolution Graph Transformers and Wavelet Positional Encoding for Learning Hierarchical StructuresCode1
Energy TransformerCode1
Unnoticeable Backdoor Attacks on Graph Neural NetworksCode1
Simplifying Subgraph Representation Learning for Scalable Link PredictionCode1
On the Connection Between MPNN and Graph TransformerCode1
Efficiently predicting high resolution mass spectra with graph neural networksCode1
A Generalization of ViT/MLP-Mixer to GraphsCode1
Exploring Fake News Detection with Heterogeneous Social Media Context GraphsCode1
Regularized Optimal Transport Layers for Generalized Global Pooling OperationsCode1
Total Variation Graph Neural NetworksCode1
Unlearning Graph Classifiers with Limited Data ResourcesCode1
Unleashing the Power of Graph Data Augmentation on Covariate Distribution ShiftCode1
PAGE: Prototype-Based Model-Level Explanations for Graph Neural NetworksCode1
Global Counterfactual Explainer for Graph Neural NetworksCode1
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1GIN-0Accuracy762Unverified
2HGP-SLAccuracy84.91Unverified
3rLap (unsupervised)Accuracy84.3Unverified
4TFGW ADJ (L=2)Accuracy82.9Unverified
5FIT-GNNAccuracy82.1Unverified
6DUGNNAccuracy81.7Unverified
7MEWISPoolAccuracy80.71Unverified
8CIN++Accuracy80.5Unverified
9MAGPoolAccuracy80.36Unverified
10SAEPoolAccuracy80.36Unverified
#ModelMetricClaimedVerifiedStatus
1Evolution of Graph ClassifiersAccuracy100Unverified
2MEWISPoolAccuracy96.66Unverified
3TFGW ADJ (L=2)Accuracy96.4Unverified
4GIUNetAccuracy95.7Unverified
5G_InceptionAccuracy95Unverified
6GICAccuracy94.44Unverified
7CIN++Accuracy94.4Unverified
8sGINAccuracy94.14Unverified
9CANAccuracy94.1Unverified
10Deep WL SGN(0,1,2)Accuracy93.68Unverified
#ModelMetricClaimedVerifiedStatus
1TFGW ADJ (L=2)Accuracy88.1Unverified
2WKPI-kmeansAccuracy87.2Unverified
3FGW wl h=4 spAccuracy86.42Unverified
4WL-OA KernelAccuracy86.1Unverified
5WL-OAAccuracy86.1Unverified
6FGW wl h=2 spAccuracy85.82Unverified
7WWLAccuracy85.75Unverified
8DUGNNAccuracy85.5Unverified
9δ-2-LWLAccuracy85.5Unverified
10CIN++Accuracy85.3Unverified