Hypergraph Neural Networks (AAAI 2019)
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Updated
Aug 31, 2022 - Python
Hypergraph Neural Networks (AAAI 2019)
KaHyPar (Karlsruhe Hypergraph Partitioning) is a multilevel hypergraph partitioning framework providing direct k-way and recursive bisection based partitioning algorithms that compute solutions of very high quality.
Python package for hypergraph analysis and visualization.
C++/Wolfram Language package for exploring set and graph rewriting systems
[NeurIPS'22] Tokenized Graph Transformer (TokenGT), in PyTorch
NeurIPS 2019: HyperGCN: A New Method of Training Graph Convolutional Networks on Hypergraphs
A curated list of Hypergraph Learning, Hypergraph Theory, Hypergraph Dataset and Hypergraph Tool.
Mt-KaHyPar (Multi-Threaded Karlsruhe Hypergraph Partitioner) is a shared-memory multilevel graph and hypergraph partitioner equipped with parallel implementations of techniques used in the best sequential partitioning algorithms. Mt-KaHyPar can partition extremely large hypergraphs very fast and with high quality.
Implementation of EMNLP2020 -- Be More with Less: Hypergraph Attention Networks for Inductive Text Classification
The jBPT code library is a compendium of technologies that support research on design, execution, and evaluation of business processes. The library offers a broad range of basis analysis and utility functionality and, due to its open publishing model, can easily be extended.
A performant, parallel, probabilistic, random acyclic-graph, low-latency, perfect hash generation library.
Hypergraph is data structure library to create a directed hypergraph in which a hyperedge can join any number of vertices.
single-cell Hi-C, scHi-C, Hi-C, 3D genome, nuclear organization, hypergraph
Collection of papers relating data-driven higher-order graph/networks researches.
Chapel HyperGraph Library (CHGL) - HPC-class Hypergraphs in Chapel
Code of the paper "Game theoretic hypergraph matching for multi-source image correspondences". [论文代码] 超图匹配和多源图像特征点匹配。
[NeurIPS'21] Higher-order Transformers for sets, graphs, and hypergraphs, in PyTorch
[WWW'21] Multiplex Bipartite Network Embedding using Dual Hypergraph Convolutional Networks
multiway chromatin interaction, 3D genome, single-nucleus, hypergraph representation learning
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