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 201225 of 927 papers

TitleStatusHype
Improving Subgraph-GNNs via Edge-Level Ego-Network EncodingsCode0
Isomorphic-Consistent Variational Graph Auto-Encoders for Multi-Level Graph Representation Learning0
On the Initialization of Graph Neural NetworksCode0
Recurrent Distance Filtering for Graph Representation LearningCode1
On the Adversarial Robustness of Graph Contrastive Learning Methods0
Disentangling the Spectral Properties of the Hodge Laplacian: Not All Small Eigenvalues Are Equal0
Benchmarking Toxic Molecule Classification using Graph Neural Networks and Few Shot Learning0
Hard Label Black Box Node Injection Attack on Graph Neural NetworksCode0
Exploring Graph Classification Techniques Under Low Data Constraints: A Comprehensive Study0
GRAM: An Interpretable Approach for Graph Anomaly Detection using Gradient Attention Maps0
Going beyond persistent homology using persistent homology0
Architecture Matters: Uncovering Implicit Mechanisms in Graph Contrastive LearningCode0
Diversified Node Sampling based Hierarchical Transformer Pooling for Graph Representation Learning0
Laplacian Canonization: A Minimalist Approach to Sign and Basis Invariant Spectral EmbeddingCode0
BLIS-Net: Classifying and Analyzing Signals on Graphs0
PSP: Pre-Training and Structure Prompt Tuning for Graph Neural NetworksCode0
A Causal Disentangled Multi-Granularity Graph Classification Method0
Generative and Contrastive Paradigms Are Complementary for Graph Self-Supervised Learning0
Self-supervision meets kernel graph neural models: From architecture to augmentations0
Mirage: Model-Agnostic Graph Distillation for Graph ClassificationCode0
Enhanced Graph Neural Networks with Ego-Centric Spectral Subgraph Embeddings AugmentationCode0
Taking the human out of decomposition-based optimization via artificial intelligence: Part I. Learning when to decompose0
One for All: Towards Training One Graph Model for All Classification TasksCode2
Graph-level Representation Learning with Joint-Embedding Predictive ArchitecturesCode1
GDM: Dual Mixup for Graph Classification with Limited Supervision0
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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