SNAP for C++
SNAP C++ Main Page
SNAP C++ Download
SNAP C++ Documentation
SNAP for Python
Snap.py Python Main Page
Snap.py Python Download
Snap.py Python Documentation
SNAP Datasets
Large networks
Web datasets
Other resources
BIOSNAP Datasets
What's new
People
Papers
Projects
Activity Inequality
AGM
BetaE
CAW
COMET
ConE
Conflict
ConNIe
Counseling
CRank
Distance-encoding
Decagon
F-FADE
GIB
GNN-Design
GNN-Explainer
GNN-pretrain
GRAPE
GraphSAGE
GraphWave
G2SAT
HGCN
Higher-order
ID-GNN
Disinformation
InfoPath
JODIE
LIM
MAPPR
MAMBO
MARS
Memetracker
NCP
NE
NETINF
NIFTY
node2vec
Ocean
OhmNet
ORCA
NeuroMatch
Pathways
P-GNN
Query2box
QUOTUS
Ringo
SEISMIC
SNAP
Snap.py
SnapVX
SPMiner
STELLAR
Temporal Motifs
TICC
TIPAS
Tree of Life
TVGL
Citing SNAP
Links
About
Contact us
Open positions
We are inviting applications for postdoctoral positions in
Foundation Models for Biomedicine
. We have open positions for
undergraduate and graduate
research assistants. The application form and project descriptions can be found
here
.
Projects
AGM
: Model-based Approach to Detecting Densely Overlapping Communities in Networks
BetaE
: Beta Embeddings for Multi-Hop Logical Reasoning in Knowledge Graphs
BiDyn
: BiDyn: Bipartite Dynamic Representations for Abuse Detection
COMET
: Concept Learners for Generalizable Few-Shot Learning
ConNIe
: Inferring Networks of Diffusion and Influence
ConE
: Modeling Heterogeneous Hierarchies with Relation-specific Hyperbolic Cones
Counseling
: Counseling Conversation Analysis
CRank
: Prioritizing Network Communities
Distance-encoding
: Design Provably More Powerful GNNs for Structural Representation Learning
Decagon
: Graph Neural Network for Multirelational Link Prediction
F-FADE
: Frequency Factorization for Anomaly Detection in Edge Streams
GIB
: Graph Information Bottleneck
GNN-Design
: Design Space for Graph Neural Networks
GNN-Explainer
: Generating Explanations for Graph Neural Networks
GNN-pretrain
: Strategies for Pre-training Graph Neural Networks
GRAPE
: Handling Missing Data with Graph Representation Learning
GraphWave
: Learning Structural Node Embeddings
G2SAT
: Learning to Generate SAT Formulas
HGCN
: Hyperbolic Graph Convolutional Neural Networks
Higher-order
: Higher-order organization of complex networks
ID-GNN
: Identity-aware Graph Neural Networks
InfoPath
: Structure and Dynamics of Information Pathways in On-line Media
JODIE
: Predicting Dynamic Embedding Trajectory in Temporal Interaction Networks
LIM
: Linear Influence Model
NCP
: Network Community Profile
MAMBO
: Construction and Representation of Multimodal Biomedical Networks
MAPPR
: Local Higher-ordering Clustering with MAPPR method
MARS
: Discovering Novel Cell Types across Heterogeneous Single-cell Experiments
NE
: Network Enhancement
NETINF
: Inferring Networks of Diffusion and Influence
NeuroMatch
: Neural Subgraph Matching
NIFTY
: A System for Large Scale Information Flow Tracking and Clustering
node2vec
: Scalable Feature Learning for Networks
QUOTUS
: The Structure of Political Media Coverage as Revealed by Quoting Patterns
Query2box
: Reasoning over Knowledge Graphs in Vector Space Using Box Embeddings
QAGNN
: Reasoning with Language Models and Knowledge Graphs for Question Answering
Ocean
: Online Task Inference for Compositional Tasks with Context Adaptation
OhmNet
: Feature Learning in Multi-Layer Tissue Networks
ORCA
: Open-World Semi-Supervised Learning
Pathways
: Disease Pathways in the Human Interactome
Persuasion
: M2P2: Multimodal Persuasive Prediction using Adaptive Fusion
P-GNN
: Position-aware Graph Neural Networks
Ringo
: In-Memory Graph Exploration System
SEISMIC
: A Self-Exciting Point Process Model for Predicting Tweet Popularity
SNAP
: Stanford Network Analysis Platform
Snap.py
: SNAP for Python
SnapVX
: Network-Based Optimization Solver
SPMiner
: SPMiner: Frequent Subgraph Mining by Walking in Order Embedding Space
STELLAR
: Annotation of Spatially Resolved Single-cell Data
Tree of Life
: Evolution of protein interactomes across the tree of life
[an error occurred while processing this directive]