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Stochastic Block Model

Papers

Showing 150 of 370 papers

TitleStatusHype
A network approach to topic modelsCode1
Synergistic Graph Fusion via Encoder EmbeddingCode1
Community Detection in Bipartite Networks with Stochastic BlockmodelsCode1
Adaptive Universal Generalized PageRank Graph Neural NetworkCode1
What Is Missing In Homophily? Disentangling Graph Homophily For Graph Neural NetworksCode1
When Do Graph Neural Networks Help with Node Classification? Investigating the Impact of Homophily Principle on Node DistinguishabilityCode1
MSGNN: A Spectral Graph Neural Network Based on a Novel Magnetic Signed LaplacianCode1
Graph Attention RetrospectiveCode1
SSSNET: Semi-Supervised Signed Network ClusteringCode1
Interpretable Clustering on Dynamic Graphs with Recurrent Graph Neural NetworksCode1
On the Universality of Graph Neural Networks on Large Random GraphsCode1
Transformers meet Stochastic Block Models: Attention with Data-Adaptive Sparsity and CostCode1
Examining the Effects of Degree Distribution and Homophily in Graph Learning ModelsCode1
One-Hot Graph Encoder EmbeddingCode1
MMSE of probabilistic low-rank matrix estimation: Universality with respect to the output channelCode0
Latent space models for multiplex networks with shared structureCode0
Modeling Sense Structure in Word Usage Graphs with the Weighted Stochastic Block ModelCode0
Interactions in information spread: quantification and interpretation using stochastic block modelsCode0
Hierarchical community structure in networksCode0
Inference and Visualization of Community Structure in Attributed Hypergraphs Using Mixed-Membership Stochastic Block ModelsCode0
Joint Community Detection and Rotational Synchronization via Semidefinite ProgrammingCode0
Graph Community Detection from Coarse Measurements: Recovery Conditions for the Coarsened Weighted Stochastic Block ModelCode0
DYMAG: Rethinking Message Passing Using Dynamical-systems-based WaveformsCode0
Reliable Time Prediction in the Markov Stochastic Block ModelCode0
Fast Network Community Detection with Profile-Pseudo Likelihood MethodsCode0
Graph Convolution for Semi-Supervised Classification: Improved Linear Separability and Out-of-Distribution GeneralizationCode0
Evaluating Overfit and Underfit in Models of Network Community StructureCode0
A Neural Collapse Perspective on Feature Evolution in Graph Neural NetworksCode0
Spectral Clustering for Directed Graphs via Likelihood Estimation on Stochastic Block ModelsCode0
Merge-split Markov chain Monte Carlo for community detectionCode0
DiSC: Differential Spectral Clustering of FeaturesCode0
Differentially-Private Hierarchical Clustering with Provable Approximation GuaranteesCode0
Disentangling homophily, community structure and triadic closure in networksCode0
Assortative-Constrained Stochastic Block ModelsCode0
Community Detection in the Stochastic Block Model by Mixed Integer ProgrammingCode0
A Semidefinite Relaxation Approach for Fair Graph ClusteringCode0
Community and hyperedge inference in multiple hypergraphsCode0
Community detection in sparse time-evolving graphs with a dynamical Bethe-HessianCode0
Community Detection with Graph Neural NetworksCode0
Clustering in Partially Labeled Stochastic Block Models via Total Variation MinimizationCode0
Efficiently inferring community structure in bipartite networksCode0
Community recovery in non-binary and temporal stochastic block modelsCode0
Almost exact recovery in noisy semi-supervised learningCode0
Bayesian community detection for networks with covariatesCode0
Generative models for local network community detectionCode0
A Bayesian Method for Joint Clustering of Vectorial Data and Network DataCode0
Perspectives and constraints on neural network models of neurobiological processesCode0
Guarantees for Spectral Clustering with Fairness ConstraintsCode0
Hierarchical Stochastic Block Model for Community Detection in Multiplex NetworksCode0
An iterative clustering algorithm for the Contextual Stochastic Block Model with optimality guaranteesCode0
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